419 results on '"Image texture"'
Search Results
2. Deterioration identification of stone cultural heritage based on hyperspectral image texture features.
- Author
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Li, Xingyue, Yang, Haiqing, Chen, Chiwei, Zhao, Gang, and Ni, Jianghua
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CULTURAL property , *STONE , *CONSERVATION & restoration , *SPECTRAL reflectance , *CULTURAL identity - Abstract
• The spectral characteristics of different types of deterioration are analyzed. • The normalized spectral index is constructed to preliminarily identify the deterioration. • The relationship between spectral reflectance and Schmidt rebound value is established. • The deterioration identification models are established based on hyperspectral image texture features. Deterioration investigation is an essential foundation for understanding the preservation status of stone cultural heritage, as well as for carrying out emergency and preventive conservation. Traditional photogrammetry method for deterioration investigation in stone cultural heritage heavily relies on personnel experience and has low automation. To accurately evaluate the degree of deterioration and quantify its scale, different algorithms are used to establish the rebound value prediction model and deterioration identification model based on the hyperspectral image. The effects of different wavelength selection methods and different classification models are compared. The results show that the rebound value inversion model constructed by CARS and PLS delivers the most accurate forecasts, with R2 being no less than 0.85. The maximum error of the model when applied in the field does not exceed 20%. Different types of deterioration can be initially identified by the normalized spectral index constructed from the 530 nm and 675 nm wavelengths. In addition, all four classification models based on hyperspectral imaging texture features can identify different types of deterioration. The LGBM model has the highest identification accuracy of 0.98. It also has good performance in field identification. This study provides a new method for deterioration investigation in stone cultural heritage. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. Perceiving placental ultrasound image texture evolution during pregnancy with normal and adverse outcome through machine learning prism.
- Author
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Arora, Urvashi, Sengupta, Debarka, Kumar, Manisha, Tirupathi, Kommineni, Sai, Munagala Krishna, Hareesh, Amuru, Sai Chaithanya, Elapanti Sri, Nikhila, Vishnumolakala, Bhavana, Nellore, Vigneshwar, Palani, Rani, Anjali, and Yadav, Reena
- Abstract
The objective was to perform placental ultrasound image texture (UPIA) in first (T1), second(T2) and third(T3) trimesters of pregnancy using machine learning(ML). In this prospective observational study the 2D placental ultrasound (US) images from 11-14 weeks, 20-24 weeks, and 28-32 weeks were taken. The image data was divided into training, validating, and testing subsets in the ratio of 80%, 10%, and 10%. Three different ML techniques, deep learning, transfer learning, and vision transformer were used for UPIA. Out of 1008 cases included in the study, 59.5% (600/1008) had a normal outcome. The image texture classification was compared between T1&T2, T2 &T3 and T1&T3 pairs. Using Inception v3 model, to classify T1& T2 images, gave the accuracy, Cohen Kappa score of 83.3%, 0.662 respectively. The image classification between T1&T3 achieved best results using EfficientNetB0 model, having the accuracy, Cohen Kappa score, sensitivity and specificity of 87.5%, 0.749, 83.4%, and 88.9% respectively. Comparison of placental image texture among cases with materno-fetal adverse outcome and controls was done using Efficient Net B0. The F1 score, was found to be 0.824 , 0.820, and 0.892 in T1, T2 and T3 respectively. The sensitivity and specificity of the model was 77.4% at 80.2% at T1 but increased to 81.0% and 93.9% at T2 &T3 respectively. The study presents a novel technique to classify placental ultrasound image texture using ML models and could differentiate first and third-trimester normal placenta and normal and adverse pregnancy outcome images with good accuracy. • Study presents a novel technique to classify placental ultrasound image texture. • Images of each trimester were classified using artificial intelligence (AI). • Images of 1st and 3rd were best classified using transfer learning AI model. • This technique proved good in differentiating normal outcome and adverse pregnancy outcome. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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4. Remote sensing of invasive alien wattle using image texture ratios in the low-lying Midlands of KwaZulu-Natal, South Africa
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Brewer, Kiara, Lottering, Romano, and Peerbhay, Kabir
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- 2022
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5. Comprehensive analysis of water carrying capacity based on wireless sensor network and image texture of feature extraction
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Yang, Ying and Chen, Ji
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- 2022
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6. Multi-scale selective image texture smoothing via intuitive single clicks
- Author
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Liu, Chong, Feng, Yidan, Yang, Cui, Wei, Mingqiang, and Wang, Jun
- Published
- 2021
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7. Detecting and mapping invasive Parthenium hysterophorus L. along the northern coastal belt of KwaZulu-Natal, South Africa using image texture
- Author
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Chetty, Samantha, Mutanga, Onisimo, and Lottering, Romano
- Published
- 2021
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8. Discriminating commercial forest species using image texture computed from a WorldView-2 pan-sharpened image and partial least squares discriminant analysis
- Author
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Sibiya, Bongokuhle, Lottering, Romano, and Odindi, John
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- 2021
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9. Using remote sensing to identify soil types based on multiscale image texture features
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Duan, Mengqi and Zhang, Xiaoguang
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- 2021
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10. Automatic gauze tracking in laparoscopic surgery using image texture analysis
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de la Fuente López, Eusebio, Muñoz García, Álvaro, Santos del Blanco, Lidia, Fraile Marinero, Juan Carlos, and Pérez Turiel, Javier
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- 2020
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11. Image texture surface analysis using an improved differential box counting based fractal dimension
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Panigrahy, Chinmaya, Seal, Ayan, and Mahato, Nihar Kumar
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- 2020
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12. Analysis of internet of things malware using image texture features and machine learning techniques
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Karanja, Evanson Mwangi, Masupe, Shedden, and Jeffrey, Mandu Gasennelwe
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- 2020
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13. Comparing partial least squares (PLS) discriminant analysis and sparse PLS discriminant analysis in detecting and mapping Solanum mauritianum in commercial forest plantations using image texture
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Lottering, Romano Trent, Govender, Mackyla, Peerbhay, Kabir, and Lottering, Shenelle
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- 2020
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14. Automatic detection of asphalt pavement raveling using image texture based feature extraction and stochastic gradient descent logistic regression
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Hoang, Nhat-Duc
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- 2019
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15. Two-dimensional multiscale entropy analysis: Applications to image texture evaluation
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Silva, Luiz E.V., Duque, Juliano J., Felipe, Joaquim C., Murta Jr, Luiz O., and Humeau-Heurtier, Anne
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- 2018
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16. Polarization Image Texture Feature Extraction Algorithm Based on CS-LBP Operator
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Yuan, Baohong, Xia, Baihua, and Zhang, Dexiang
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- 2018
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17. Application of the angle measure technique as image texture analysis method for the identification of uranium ore concentrate samples: New perspective in nuclear forensics
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Fongaro, Lorenzo, Lin Ho, Doris Mer, Kvaal, Knut, Mayer, Klaus, and Rondinella, Vincenzo V.
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- 2016
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18. Preserving image texture while reducing radiation dose with a deep learning image reconstruction algorithm in chest CT: A phantom study.
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Franck, Caro, Zhang, Guozhi, Deak, Paul, and Zanca, Federica
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• DL reconstructions decrease image noise without modifying FBP image texture. • DL reconstructions improve spatial resolution and detectability as to FBP and IR. • DL reconstructions can further reduce dose with respect to IR. To assess whether a deep learning image reconstruction algorithm (TrueFidelity) can preserve the image texture of conventional filtered back projection (FBP) at reduced dose levels attained by ASIR-V in chest CT. Phantom images were acquired using a clinical chest protocol (7.6 mGy) and two levels of dose reduction (60% and 80%). Images were reconstructed with FBP, ASIR-V (50% and 100% blending) and TrueFidelity (low (DL-L), medium (DL-M) and high (DL-H) strength). Noise (SD), noise power spectrum (NPS) and task-based transfer function (TTF) were calculated. Noise texture was quantitatively compared by computing root-mean-square deviations (RMSD) of NPS with respect to FBP. Four experienced readers performed a contrast-detail evaluation. The dose reducing potential of TrueFidelity compared to ASIR-V was assessed by fitting SD and contrast-detail as a function of dose. DL-M and DL-H reduced noise and NPS area compared to FBP and 50% ASIR-V, at all dose levels. At 7.6 mGy, NPS of ASIR-V 50/100% was shifted towards lower frequencies (f peak = 0.22/0.13 mm
−1 , RMSD = 0.14/0.38), with respect to FBP (f peak = 0.30 mm−1 ). Marginal difference was observed for TrueFidelity: f peak = 0.33/0.30/0.30 mm−1 and RMSD = 0.03/0.04/0.07 for L/M/H strength. Values of TTF 50% were independent of DL strength and higher compared to FBP and ASIR-V, at all dose and contrast levels. Contrast-detail was highest for DL-H at all doses. Compared to 50% ASIR-V, DL-H had an estimated dose reducing potential of 50% on average, without impairing noise, texture and detectability. TrueFidelity preserves the image texture of FBP, while outperforming ASIR-V in terms of noise, spatial resolution and detectability at lower doses. [ABSTRACT FROM AUTHOR]- Published
- 2021
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19. Coal–rock interface detection on the basis of image texture features
- Author
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Sun, Jiping and Su, Bo
- Published
- 2013
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20. Estimating tropical forest biomass with a combination of SAR image texture and Landsat TM data: An assessment of predictions between regions
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Cutler, M.E.J., Boyd, D.S., Foody, G.M., and Vetrivel, A.
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- 2012
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21. Predicting forest structural parameters using the image texture derived from WorldView-2 multispectral imagery in a dryland forest, Israel
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Ozdemir, Ibrahim and Karnieli, Arnon
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- 2011
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22. Image texture analysis of pellets made of lignocellulosic materials.
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Dąbrowska, Magdalena, Kozieł, Tomasz, Janaszek-Mańkowska, Monika, and Lisowski, Aleksander
- Abstract
This experiment aimed to find the relation between image texture features of pellets made of various lignocellulosic materials (wood, wheat straw, hay, giant miscanthus, prairie spartina, and giant knotweed) and their physico-mechanical properties (density, compressive energy, maximum compressive strength, modulus of elasticity). Using the Kruskal-Wallis's test, the effect of materials on these properties was examined. Texture features were derived from the grey-level co-occurrence matrix, grey-level run-length matrix, absolute gradient matrix, autoregressive model, and wavelet decomposition, resulting in 86 features, later reduced to 8 factors via explanatory factor analysis. These factors were used as predictors in regression models for physico-mechanical properties. The models for modulus of elasticity achieved R2 adj values of 0.91–0.99 (except for hay and wood), compressive stress models achieved 0.65–0.99 (excluding hay and wood), compressive energy models ranged from 0.60 to 0.97 (excluding hay), and density models ranged from 0.56 to 0.97 (excluding wood). The study confirmed a significant correlation between material type, texture parameters and compression resistance, suggesting this method could monitor pellet quality in production. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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23. Automatic characterization of nanofiber assemblies by image texture analysis
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Facco, Pierantonio, Tomba, Emanuele, Roso, Martina, Modesti, Michele, Bezzo, Fabrizio, and Barolo, Massimiliano
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- 2010
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24. Local quaternion Fourier transform and color image texture analysis
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Assefa, Dawit, Mansinha, Lalu, Tiampo, Kristy F., Rasmussen, Henning, and Abdella, Kenzu
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- 2010
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25. Phase Image Texture Analysis for Motion Detection in Diffusion MRI (PITA-MDD).
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Elsaid, Nahla M.H., Prince, Jerry L., Roys, Steven, Gullapalli, Rao P., and Zhuo, Jiachen
- Subjects
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DIFFUSION magnetic resonance imaging , *IMAGE analysis , *MOTION analysis - Abstract
Pronounced spin phase artifacts appear in diffusion-weighted imaging (DWI) with only minor subject motion. While DWI data corruption is often identified as signal drop out in diffusion-weighted (DW) magnitude images, DW phase images may have higher sensitivity for detecting subtle subject motion. This article describes a novel method to return a metric of subject motion, computed using an image texture analysis of the DW phase image. This Phase Image Texture Analysis for Motion Detection in dMRI (PITA-MDD) method is computationally fast and reliably detects subject motion from diffusion-weighted images. A threshold of the motion metric was identified to remove motion-corrupted slices, and the effect of removing corrupted slices was assessed on the reconstructed FA maps and fiber tracts. Using a motion-metric threshold to remove the motion-corrupted slices results in superior fiber tracts and fractional anisotropy maps. When further compared to a state-of-the-art magnitude-based motion correction method, PITA-MDD was able to detect comparable corrupted slices in a more computationally efficient manner. In this study, we evaluated the use of DW phase images to detect motion corruption. The proposed method can be a robust and fast alternative for automatic motion detection in the brain with multiple applications to inform prospective motion correction or as real-time feedback for data quality control during scanning, as well as after data is already acquired. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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26. Study On the Relationship between Surface Roughness of AA6061 Alloy End Milling and Image Texture Features of Milled Surface.
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Nathan, D., Thanigaiyarasu, G., and Vani, K.
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ALUMINUM alloys ,SURFACE roughness ,TEXTURE analysis (Image processing) ,SAMPLING (Process) ,FEATURE extraction ,MECHANICAL alloying - Abstract
The Surface roughness and image texture features of milled surfaces are key parameters to study the surface characteristics of end milled AA 6061 alloy. A Machine vision system is employed to capture and store the images of the end milled workpieces. The stylus type instrument is used measure the surface roughness values of various milled workpieces for different cutting conditions such as speed, feed and depth of cut. The Grey Level Cooccurance Matrix [GLCM] is introduced to extract the image texture features of the end milled surfaces. Four Matrices about different sampling orientations are builtup to determine the various image texure features such as contrast, homogenity, correlation and energy. A regression analysis is performed between image texture features and surface roughness values of the machined surfaces. Finally, the relationship between surface roughness and image texture features has been established. [ABSTRACT FROM AUTHOR]
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- 2014
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27. Image texture analysis: methods and comparisons
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Bharati, Manish H., Liu, J.Jay, and MacGregor, John F.
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- 2004
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28. Modal features for image texture classification.
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Lacombe, Thomas, Favreliere, Hugues, and Pillet, Maurice
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FEATURE extraction , *VIBRATION (Mechanics) , *VIBRATION of buildings , *IMAGE processing , *PATTERN recognition systems , *ART techniques - Abstract
• A new feature extraction method based on Discrete Modal Decomposition is proposed. • Modal features can firstly be computed as the DMD coordinates of the image. • Modal features can secondly be computed using the DMD as a local transform process. • Experimental tests show the relevance of the method on a texture classification task, with lower extraction times than state-of-the art methods. Feature extraction is a key step in image processing for pattern recognition and machine learning processes. Its purpose lies in reducing the dimensionality of the input data through the computing of features which accurately describe the original information. In this article, a new feature extraction method based on Discrete Modal Decomposition (DMD) is introduced, to extend the group of space and frequency based features. These new features are called modal features. Initially aiming to decompose a signal into a modal basis built from a vibration mechanics problem, the DMD projection is applied to images in order to extract modal features with two approaches. The first one, called full scale DMD, consists in exploiting directly the decomposition resulting coordinates as features. The second one, called filtering DMD, consists in using the DMD modes as filters to obtain features through a local transformation process. Experiments are performed on image texture classification tasks including several widely used data bases, compared to several classic feature extraction methods. We show that the DMD approach achieves good classification performances, comparable to the state of the art techniques, with a lower extraction time. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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29. Real-time Road Congestion Detection Based on Image Texture Analysis.
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Wei, Li and Hong-ying, Dai
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TRAFFIC engineering ,TRAFFIC congestion ,HIGHWAY engineering ,TRANSPORTATION engineering ,TRAFFIC flow - Abstract
Proposing a fast detection algorithm for urban road traffic congestion based on image processing technology. Firstly, to speed up the processing and to freely select the interesting area, the human-computer interaction vehicle area detection was put forward. Then, by using the difference of texture features between congestion image and unobstructed image, proposing vehicle density estimation based on texture analysis. Through image grayscale relegation, gray level co-occurrence matrix calculation and feature extraction, the energy and entropy features that could reflect vehicle density were obtained from vehicle area. After features training, the decision threshold could be obtained and traffic congestion was carried out. Experimental results showed that the accuracy of algorithm was as high as 99%, and the processing speed could satisfy the real-time requirement in engineering. [ABSTRACT FROM AUTHOR]
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- 2016
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30. Liver fibrosis staging using CT image texture analysis and soft computing.
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Kayaaltı, Ömer, Aksebzeci, Bekir Hakan, Karahan, İbrahim Ökkeş, Deniz, Kemal, Öztürk, Mehmet, Yılmaz, Bülent, Kara, Sadık, and Asyalı, Musa Hakan
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LIVER disease diagnosis ,COMPUTED tomography ,TEXTURE analysis (Image processing) ,DIGITAL image processing ,MEDICAL imaging systems ,SOFT computing ,ULTRASONIC imaging - Abstract
Liver biopsy is considered to be the gold standard for analyzing chronic hepatitis and fibrosis; however, it is an invasive and expensive approach, which is also difficult to standardize. Medical imaging techniques such as ultrasonography, computed tomography (CT), and magnetic resonance imaging are non-invasive and helpful methods to interpret liver texture, and may be good alternatives to needle biopsy. Recently, instead of visual inspection of these images, computer-aided image analysis based approaches have become more popular. In this study, a non-invasive, low-cost and relatively accurate method was developed to determine liver fibrosis stage by analyzing some texture features of liver CT images. In this approach, some suitable regions of interests were selected on CT images and a comprehensive set of texture features were obtained from these regions using different methods, such as Gray Level Co-occurrence matrix (GLCM), Laws’ method, Discrete Wavelet Transform (DWT), and Gabor filters. Afterwards, sequential floating forward selection and exhaustive search methods were used in various combinations for the selection of most discriminating features. Finally, those selected texture features were classified using two methods, namely, Support Vector Machines (SVM) and k -nearest neighbors ( k -NN). The mean classification accuracy in pairwise group comparisons was approximately 95% for both classification methods using only 5 features. Also, performance of our approach in classifying liver fibrosis stage of subjects in the test set into 7 possible stages was investigated. In this case, both SVM and k -NN methods have returned relatively low classification accuracies. Our pairwise group classification results showed that DWT, Gabor, GLCM, and Laws’ texture features were more successful than the others; as such features extracted from these methods were used in the feature fusion process. Fusing features from these better performing families further improved the classification performance. The results show that our approach can be used as a decision support system in especially pairwise fibrosis stage comparisons. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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31. Comparative study of transform-based image texture analysis for the evaluation of banana quality using an optical backscattering system.
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Hashim, Norhashila, Adebayo, Segun Emmanuel, Abdan, Khalina, and Hanafi, Marsyita
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IMAGE analysis , *FRUIT quality , *BANANAS , *BACKSCATTERING , *IMAGING systems , *COMPARATIVE studies , *SUPPORT vector machines - Abstract
In this study, the application of a backscattering imaging system with different approaches of transform-based image texture analysis for the evaluation of banana quality at different ripening stages was investigated with Wavelet, Gabor and Tamura transforms. The attenuated images of the fruits were acquired using Laser Light Backscattering Imaging (LLBI) with laser diodes emitting light at three wavelengths viz 532, 660, and 830 nm. The elasticity, chlorophyll index and soluble solids content (SSC) of each sample were measured as reference parameters by using a texture analyser, a Delta Absorbance (DA) meter, and a refractometer, respectively. The performance of the extracted features from the selected transform-based image texture analysis for analysing the quality parameters of the fruit was evaluated by means of an artificial neural network (ANN) and a support vector machine (SVM). The results indicated that there were significant changes of elasticity, chlorophyll index and SSC as the ripening stages increased. Prediction model analysis showed that the Wavelet transform exhibited the most reliable results for all of the reference parameters followed by Tamura and the Gabor transform. The results also revealed that analysis using an ANN approach recorded better performance than SVM as reflected by higher coefficient of determination (R 2 ) values. Thus, this study indicated that an LLBI system with transform-based image texture analysis coupled with computational intelligence techniques can be used for the evaluation of the quality of bananas. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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32. The effects of habitat heterogeneity, as measured by satellite image texture, on tropical forest bird distributions.
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Suttidate, Naparat, Pidgeon, Anna M., Hobi, Martina L., Round, Philip D., Dubinin, Maxim, and Radeloff, Volker C.
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REMOTE-sensing images , *FOREST birds , *HABITATS , *TROPICAL forests , *FRAGMENTED landscapes , *ENVIRONMENTAL degradation , *BIODIVERSITY conservation - Abstract
Global biodiversity loss is most pronounced in the tropics. Monitoring of broad-scale patterns of habitat is essential for biodiversity conservation. Image texture measures derived from satellite data are proxies for habitat heterogeneity, but have not been tested in tropical forests. Our goal was to evaluate image texture to predict tropical forest bird distributions across Thailand for different guilds. We calculated a suite of texture measures from cumulative productivity (1-km fPAR-MODIS data) for Thailand's forests, and assessed how well texture measures predicted distributions of 86 tropical forest bird species in relation to body size, and nesting guild. Finally, we compared the predictive performance of combining (a) satellite image texture measures, (b) habitat composition, and (c) habitat fragmentation. We found that texture measures predicted occurrences of tropical forest birds well (AUC = 0.801 ± 0.063). Second-order homogeneity was the most predictive texture measure. Our models based on texture were significantly better for birds with larger body size (p < 0.05), but did not differ among nesting guilds (p > 0.05). Models that combined texture with habitat composition measures (AUC = 0.928 ± 0.038) outperformed models that combined fragmentation with habitat composition measures (AUC = 0.905 ± 0.047) (p < 0.05). The incorporation of texture, composition, and fragmentation variables significantly improved model accuracy over texture-only models (AUC = 0.801 ± 0.063 to AUC = 0.938 ± 0.034; p < 0.05). We suggest that texture measures are a valuable tool to predict bird distributions at broad scales in tropical forests. • Satellite image texture can be a proxy for habitat heterogeneity. • We found that image texture predicted tropic bird distributions well. • Second-order homogeneity had the highest predictive power. • Texture predicted large birds especially well. • Predicting species distributions with image texture can support conservation. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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33. Modelling tree size diversity from airborne laser scanning using canopy height models with image texture measures.
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Ozdemir, Ibrahim and Donoghue, Daniel N.M.
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PLANT morphology ,PLANT diversity ,PLANT canopies ,TEXTURE analysis (Image processing) ,IMAGING systems ,BIOPHYSICS ,ANALYSIS of variance - Abstract
Abstract: The aim of this study is to investigate the relationships between the plot-level tree size diversity and variables derived from airborne laser scanning (ALS) data, which is a type of LiDAR measurement. We conducted a study using forest stands with a range of managed and near-natural stands with a broad range of species. 33 Plots that represent the forest stand variety in the study area were sampled; within each plot four biophysical variables were measured by ground-based methods, these were height (TH), diameter at breast height (DBH), crown length (CL), and crown width (CW). The resultant tree size diversity was parameterised as Lmoments (t) statistics and compared with both point-based and grid-based laser scanning diversity variables. Point-based measures included the ratios of the Percentile means (P99/P25, P99/P50, P99/75, and P99/P90), Coefficient of variation, Skewness, Kurtosis, and Lmoments (t). The grid-based texture measures derived from the ALS Canopy Height Models (CHMs) included first-order texture, Standard Deviation of Grey Levels (SDGL), and three second-order texture measures, including Contrast, Entropy and Correlation. Furthermore, we tested the influence of scale by analysing the effect of grid cell sizes when generating CHMs from the raw point cloud ALS data. Using linear regression analysis, we show that the grid-based texture measures are superior predictors of tree height diversity than the point-based metrics. Sixty percent of the variance in the tree height diversity and 51% of the variance in the DBH Diversity were explained by the SDGL and Correlation texture measures, respectively (p <0.01). The associations between the texture features and the CL Diversity and CW Diversity were weaker compared to the TH Diversity and DBH Diversity (The highest R
2 was 0.46 and 0.45, respectively, p <0.01). While the CHM calculated from a 3×3m grid cell had the strongest correlation with TH Diversity (0.60, p <0.01), the CHMs calculated from 1×1m and 2×2m cell size had the strongest association with DBH Diversity (0.51, p <0.01). Combining selected point- and grid-based variables accounted for up to 85% of the variance of tree height diversity, 68% of the variance of DBH Diversity and 52% of the variance of CL Diversity. Our study shows that the combination of laser-based height percentile ratios and texture measures derived from the ALS–CHM can be used to estimate tree size diversity across forest landscapes. [Copyright &y& Elsevier]- Published
- 2013
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34. Smallholder crop area mapped with wall-to-wall WorldView sub-meter panchromatic image texture: A test case for Tigray, Ethiopia.
- Author
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Neigh, Christopher S.R., Carroll, Mark L., Wooten, Margaret R., McCarty, Jessica L., Powell, Bristol F., Husak, Gregory J., Enenkel, Markus, and Hain, Christopher R.
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FOOD production , *FOOD security , *IMAGE segmentation , *SURFACE texture , *GEOLOGICAL mapping - Abstract
Global food production in the developing world occurs within sub-hectare fields that are difficult to identify with moderate resolution satellite imagery. Knowledge about the distribution of these fields is critical in food security programs. We developed a semi-automated image segmentation approach using wall-to-wall sub-meter imagery with high-performance computing to map crop area (CA) throughout Tigray, Ethiopia that encompasses over 41,000 km 2 . Multiple processing streams were tested to minimize mapping error while applying five unique smoothing kernels to capture differences in land surface texture associated to CA. Typically, very-small fields (mean < 2 ha) have a smooth image roughness compared to natural scrub/shrub woody vegetation at the ~1 m scale and these features can be segmented in panchromatic imagery with multi-level histogram thresholding. Multi-temporal very-high resolution (VHR) panchromatic imagery with multi-spectral VHR are sufficient in extracting critical CA information needed in food security programs. A 2011 to 2015 CA map was produced, using over 3000 WorldView-1 panchromatic images wall-to-wall in 1/2° mosaics for Tigray, Ethiopia. CA was evaluated with nearly 3000 WorldView-2 2 m multispectral 250 × 250 m image subsets by seven expert interpretations, and with in-situ global positioning system photography. CA estimates ranged from 32 to 41% in sub regions of Tigray with median maximum per bin commission and omission errors of 11% and 1% respectively, with most of the error occurring in bins <15%. This empirical, simple, and low direct cost approach via U.S. government license agreement to access commercial VHR data, could be a viable big-data high-performance computing methodology to extract wall-to-wall CA for other regions of the world that have very-small agriculture fields with similar image texture. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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35. Prediction of troponin-T degradation using color image texture features in 10d aged beef longissimus steaks.
- Author
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Sun, X., Chen, K.J., Berg, E.P., Newman, D.J., Schwartz, C.A., Keller, W.L., and Maddock Carlin, K.R.
- Subjects
- *
TROPONIN , *BIODEGRADATION , *COLOR of meat , *MEAT aging , *ERECTOR spinae muscles , *BEEF , *COOKING , *IMMUNOBLOTTING , *MEAT analysis - Abstract
Abstract: The objective was to use digital color image texture features to predict troponin-T degradation in beef. Image texture features, including 88 gray level co-occurrence texture features, 81 two-dimension fast Fourier transformation texture features, and 48 Gabor wavelet filter texture features, were extracted from color images of beef strip steaks (longissimus dorsi, n=102) aged for 10d obtained using a digital camera and additional lighting. Steaks were designated degraded or not-degraded based on troponin-T degradation determined on d 3 and d 10 postmortem by immunoblotting. Statistical analysis (STEPWISE regression model) and artificial neural network (support vector machine model, SVM) methods were designed to classify protein degradation. The d 3 and d 10 STEPWISE models were 94% and 86% accurate, respectively, while the d 3 and d 10 SVM models were 63% and 71%, respectively, in predicting protein degradation in aged meat. STEPWISE and SVM models based on image texture features show potential to predict troponin-T degradation in meat. [Copyright &y& Elsevier]
- Published
- 2014
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36. MAD: robust image texture analysis for applications in high resolution geomorphometry.
- Author
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Trevisani, S. and Rocca, M.
- Subjects
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HIGH resolution imaging , *SURFACE texture , *DIGITAL elevation models , *GEOLOGICAL statistics , *VARIOGRAMS , *ANISOTROPY - Abstract
The analysis of surface textures plays an important role in the geomorphometric analysis of high-resolution digital terrain models. Surface textures can be analyzed by means of geostatistical variogram-based indices. The use of variogram-based indices is promising because of their ability to consider the multiscale and anisotropic character of morphometric data. However, similar to other variance-type statistics, variogram-based indices are sensitive to the presence of hotspots and non-stationary data. Consequently, we present a multi-scale and directional image texture analysis operator (MAD or Median Absolute Differences) derived from a modification of a variogram estimator. MAD has been specifically developed to improve the robustness of variogram-based surface indices with a special focus on strongly non-stationary and often noisy spatial data representing solid earth surface morphology. Although the operator has been specifically developed for the analysis of high-resolution digital terrain models, it can be applied to the texture analysis of any type of image. Consequently MAD could be of interest in the broader context of remote sensing as well as for all disciplines for which image texture analysis is relevant. The theoretical presentation of the surface texture operator is accompanied by a working software prototype. The software prototype has been implemented in the Python scripting language for use in ArcGIS (ESRI) using its Spatial Analyst functions. The prototype architecture is concise and can be easily coded in different software environments, such as GIS mapping and image analysis software. The software prototype proposed has been developed to facilitate the development of ad hoc surface texture indices capable of adapting to the special needs of the study at hand. The MAD operator represents an improvement over variogram-based surface texture indices, offering a robust description of relevant aspects of surface texture, including surface roughness. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
37. Study on image retrieval based on image texture and color statistical projection.
- Author
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Zheng, Xiaofei, Tang, Bing, Gao, Zhe, Liu, Enping, and Luo, Wei
- Subjects
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IMAGE retrieval , *FEATURE extraction , *HISTOGRAMS , *SIMILARITY (Geometry) , *GRAPHICAL projection - Abstract
This article presents an image texture and hue statistical projection based retrieval. First the image is converted to HSI color model, the gray value of the image extraction, and Robert algorithm to extract the texture, then the image is divided into blocks and extracts the main color block, the main color image blocks are respectively projected in the horizontal and vertical direction of 2, get 2 projection histogram, the 2 projection histograms of the first three order center extraction distance and Robert algorithm as the features of texture, image similarity calculation. Make a very full pave the way for future Canny edge processing algorithm research of image retrieval. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
38. Diagnosis of winter-wheat water stress based on UAV-borne multispectral image texture and vegetation indices.
- Author
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Zhou, Yongcai, Lao, Congcong, Yang, Yalong, Zhang, Zhitao, Chen, Haiying, Chen, Yinwen, Chen, Junying, Ning, Jifeng, and Yang, Ning
- Subjects
- *
WINTER wheat , *MULTISPECTRAL imaging , *MATHEMATICAL transformations , *BACK propagation , *SPECTRAL reflectance , *MACHINE learning - Abstract
Timely and accurate detection of crop water stress is vital for precision irrigation. Whether the accuracy of the prevailing diagnosis of crop water stress using vegetation indices (VIs) and spectral reflectance can be improved still remains to be investigated. The crop surface characteristics such as grayscale or color vary under different water stress, so in this study one more variable, image texture, was utilized together to diagnose water stress. For this end, the canopy image of winter wheat in bloom was obtained by unmanned aerial vehicle (UAV) equipped with multispectral sensor, and the effect of soil background was eliminated using vegetation index threshold method. On this basis, Grey level co-occurrence matrix (GLCM) was used to calculate the mean (MEA), variance (VAR), homogeneity (HOM), contrast (CON), dissimilarity (DIS), entropy (ENT), second moment (SEC) and correlation (COR) of the image texture under different spatial resolutions (0.008 m, 0.01 m, 0.02 m, 0.05 m, 0.1 m and 0.2 m). Next, the canopy vegetation indices were obtained by mathematical transformation of canopy reflectance, and then sensitive image texture and vegetation indices by full subset regression method. Finally, Cubist, BPNN (Back Propagation Neural Network) and ELM (Extreme Learning Machine) methods were adopted to build the estimation models of the stomatal conductance (Gs) of winter wheat (between the sensitive image texture and Gs, and between vegetation index and Gs), and the water stress map was plotted based on the optimal Gs estimation model. The result showed: (i) the image texture obtained from the high-resolution multispectral image had a high correlation with Gs, and the image texture (VAR, HOM, CON, DIS, ENT and SEC) at 550 nm had the most significant correlation; (ii) the higher the ground resolution, the higher the correlation between the Gs and the image texture, the vegetation indices, respectively. The image texture with a ground resolution of 0.008 m combined with VIs and Gs had the highest correlation, and combining image texture and vegetation index can significantly improve the estimation accuracy of winter wheat Gs; (iii) Among the three estimation models, the BPNN model constructed by combining the image texture and VIs (MEA, VAR, ENT, DWSI and EXG) had the best estimation performance (Calibration: R c 2 = 0.899, RMSE c = 0.01, MAE c = 0.006; Validation: R c 2 = 0.834, RMSE v =;0.018, MAE v = 0.014), and an accurate estimation could even be achieved at a lower Gs value. Compared with the BPNN model solely based on VIs or image texture, the R c 2 of the BPNN model based on the combined variables increased by 24% and 22.48%, respectively. Therefore, combining UAV multispectral image texture and VIs to estimate Gs provides a feasible and accurate method for water stress diagnosis of winter wheat. • The incorporation of texture improved the accuracy of water stress diagnoses with VIs. • BPNN model with VIs and texture provided the highest accuracy of Gs estimation. • UAV provides a feasible and accurate method for water stress diagnosis of winter wheat. • Removing soil background and screening methods improve the quality of remote sensing data. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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39. Characterization of spatiotemporal stress distribution during food fracture by image texture analysis methods
- Author
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Dan, Haruka, Azuma, Teruaki, and Kohyama, Kaoru
- Subjects
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TEXTURES , *FOOD , *BRITTLENESS , *STRESS concentration , *FRACTURE mechanics - Abstract
Abstract: This study focused on finding the potential of image texture analysis for determining the spatiotemporal fracture behavior of crispy or crunchy food products. Two-dimensional stress distribution maps were obtained during compression failure of six dry-crisp samples at four loading stages. Applying gray-level co-occurrence matrix statistics to the stress distribution maps, four major textural features were extracted, which represent the spatial pattern of the stress intensity. Stress distribution maps for the samples were classified into original classes depending on their image textural features, using a canonical discriminant analysis with an accuracy of 99%. Local variations in stress intensity and the existence of areas with the same stress intensity at higher loading stages were critical spatial factors in discriminating among the different samples. In addition to spatial factors, temporal changes in image textural features during loading also provided information necessary for sample identification. This application of image texture analysis to stress distribution maps reveals the characteristics of spatiotemporal stress distribution accompanying the dynamic fracture process for crispy or crunchy samples. [Copyright &y& Elsevier]
- Published
- 2007
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- View/download PDF
40. SVM-PSO based rotation-invariant image texture classification in SVD and DWT domains.
- Author
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Chang, Bae-Muu, Tsai, Hung-Hsu, and Yen, Chih-Yuan
- Subjects
- *
SINGULAR value decomposition , *DISCRETE wavelet transforms , *SUPPORT vector machines , *TEXTURE analysis (Image processing) , *PARTICLE swarm optimization - Abstract
The paper presents a new image classification technique which first extracts rotation-invariant image texture features in singular value decomposition (SVD) and discrete wavelet transform (DWT) domains. Subsequently, it exploits a support vector machine (SVM) to perform image texture classification. For convenience, it is called the SRITCSD method hereafter. First, the method applies the SVD to enhance image textures of an image. Then, it extracts the texture features in the DWT domain of the SVD version of the image. Also, the SRITCSD method employs the SVM to serve as a multiclassifier for image texture features. Meanwhile, the particle swarm optimization (PSO) algorithm is utilized to optimize the SRITCSD method, which is exploited to select a nearly optimal combination of features and a set of parameters utilized in the SVM. The experimental results demonstrate that the SRITCSD method can achieve satisfying results and outperform other existing methods under considerations here. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
41. Source camera identification from image texture features.
- Author
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Xu, Bingchao, Wang, Xiaofeng, Zhou, Xiaorui, Xi, Jianghuan, and Wang, Shangping
- Subjects
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FEATURE extraction , *ROBUST control , *IMAGE compression , *GEOMETRIC quantization , *SUPPORT vector machines - Abstract
Source camera identification enables forensic investigator to discover the probable source model that are employed to acquire the image under investigation. It is important whenever digital content is presented as a silent witness. In this paper, we present a source camera identification method via image texture features that are extracted from well selected color model and color channel. Except to distinguish source camera models from images whatever they are captured via same or different brand cameras, the main contributions of the proposed method are as follows: (1) It can distinguish imaging device individuals from images even if they are taken by using same brand and model of devices. (2) It is robust for content-preserving manipulations or geometric distortions, such as JEPG compression, adding noise, and rotation and scaling. The experimental results demonstrate that the performance of the proposed method is satisfactory. Compared with the state-of-the-art methods, the proposed method is superior in both detection accuracy and robustness. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
42. A dual-view computer-vision system for volume and image texture analysis in multiple apple slices drying.
- Author
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Sampson, David Joseph, Chang, Young Ki, Rupasinghe, H.P. Vasantha, and Zaman, Qamar UZ
- Subjects
- *
FRUIT drying , *COMPUTER vision , *TEXTURE analysis (Image processing) , *APPLES , *EFFECT of moisture on plants - Abstract
Highlights: [•] Volume/image textural features were measured with computer-vision system. [•] Physical texture parameters and image texture features were measured with moisture. [•] Volume was not a good indicator of the end of drying process. [•] Eleven image texture features correlate well with moisture content (R 2 <0.9). [•] Uniformity of intensity texture feature can predict the end of drying process. [Copyright &y& Elsevier]
- Published
- 2014
- Full Text
- View/download PDF
43. Exploring the microstructure manifold: Image texture representations applied to ultrahigh carbon steel microstructures.
- Author
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DeCost, Brian L., Francis, Toby, and Holm, Elizabeth A.
- Subjects
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CARBON steel , *MICROSTRUCTURE , *SUPERVISED learning , *HEAT treatment , *DATA visualization - Abstract
We introduce a microstructure dataset focusing on complex, hierarchical structures found in a single Ultrahigh carbon steel under a range of heat treatments. Applying image representations from contemporary computer vision research to these microstructures, we discuss how both supervised and unsupervised machine learning techniques can be used to yield insight into microstructural trends and their relationship to processing conditions. We evaluate and compare keypoint-based and convolutional neural network representations by classifying microstructures according to their primary microconstituent, and by classifying a subset of the microstructures according to the annealing conditions that generated them. Using t-SNE, a nonlinear dimensionality reduction and visualization technique, we demonstrate graphical methods of exploring microstructure and processing datasets, and for understanding and interpreting high-dimensional microstructure representations. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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44. The Poisson equation for image texture modelling
- Author
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Deng, Huawu, Luk Chan, Kap, and Liu, Jun
- Subjects
- *
POISSON'S equation , *IMAGE analysis - Abstract
The Poisson equation is a class of partial differential equations which describe a steady-state temperature distribution in a bounded object. This paper applies this equation to the modelling of image textures by constructing specific heat source functions and boundary conditions. The heat source function can be considered as an image transform function such that a set of texture features at different frequencies and orientations can be extracted from the transformed image, in conjunction with using a Gabor wavelet filer bank. Better performance of image texture retrieval by these features is achieved than using the features extracted directly from the original image texture. [Copyright &y& Elsevier]
- Published
- 2003
- Full Text
- View/download PDF
45. Characterization of micrographs and fractographs of Cu-strengthened HSLA steel using image texture analysis.
- Author
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Dutta, Samik, Barat, Kaustav, Das, Arpan, Das, Swapan Kumar, Shukla, A.K., and Roy, Himadri
- Subjects
- *
COPPER , *STRENGTH of materials , *STEEL , *TEXTURE analysis (Image processing) , *COMPUTER vision , *MECHANICAL properties of metals - Abstract
Highlights: [•] Image texture analysis is used to characterize micrographs and fractographs. [•] Fractal analysis, GLCM and RLS analysis have been carried out. [•] Systematic variation of texture descriptors with ageing temperature. [•] Correlation of texture descriptors vis-à-vis mechanical properties. [•] The concept of automatic characterization with machine vision has been highlighted. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
46. Characterization of bread breakdown during mastication by image texture analysis
- Author
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Tournier, Carole, Grass, Manon, Zope, Dhananjay, Salles, Christian, and Bertrand, Dominique
- Subjects
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BREAD , *MASTICATION , *TEXTURE analysis (Image processing) , *ORAL habits , *DEGLUTITION , *DIGESTION - Abstract
Abstract: The methods currently used to characterise food breakdown during mastication are not easily applicable to cohesive and heterogeneous products such as white bread (baguettes). During this study, we investigated the applicability of image texture analysis to characterising the kinetics of bread bolus formation during chewing. Food boluses were collected from five subjects chewing four different breads after 10, 20 and 30 chewing cycles or at swallowing. Images were acquired and analysed using the Grey level co-occurrence matrix (GLCM) method. Food boluses were successfully discriminated: 60–73% of the images were correctly classified into their respective chewing cycles. Incorrect classifications arose from overlapping between subsequent cycles. Among the texture features the contrast was identified as being the best marker of food degradation. Different kinetics of bolus formation were observed between breads. This method revealed specific patterns of food degradation between subjects, which could be explained by their mastication behaviour and chewing efficiency. [Copyright &y& Elsevier]
- Published
- 2012
- Full Text
- View/download PDF
47. Image texture as a remotely sensed measure of vegetation structure
- Author
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Wood, Eric M., Pidgeon, Anna M., Radeloff, Volker C., and Keuler, Nicholas S.
- Subjects
- *
REMOTE-sensing images , *TEXTURE analysis (Image processing) , *VEGETATION & climate , *ECOLOGISTS , *ACQUISITION of data , *PLANT diversity , *HABITATS , *GRASSLANDS - Abstract
Abstract: Ecologists commonly collect data on vegetation structure, which is an important attribute for characterizing habitat. However, measuring vegetation structure across large areas is logistically difficult. Our goal was to evaluate the degree to which sample-point pixel values and image texture of remotely sensed data are associated with vegetation structure in a North American grassland–savanna–woodland mosaic. In the summers of 2008–2009 we collected vegetation structure measurements at 193 sample points from which we calculated foliage-height diversity and horizontal vegetation structure at Fort McCoy Military Installation, Wisconsin, USA. We also calculated sample-point pixel values and first- and second-order image texture measures, from two remotely sensed data sources: an infrared air photo (1-m resolution) and a Landsat TM satellite image (30-m resolution). We regressed foliage-height diversity against, and correlated horizontal vegetation structure with, sample-point pixel values and texture measures within and among habitats. Within grasslands, savanna, and woodland habitats, sample-point pixel values and image texture measures explained 26–60% of foliage-height diversity. Similarly, within habitats, sample-point pixel values and image texture measures were correlated with 40–70% of the variation of horizontal vegetation structure. Among habitats, the mean of the texture measure ‘second-order contrast’ from the air photo explained 79% of the variation in foliage-height diversity while ‘first-order variance’ from the air photo was correlated with 73% of horizontal vegetation structure. Our results suggest that sample-point pixel values and image texture measures calculated from remotely sensed data capture components of foliage-height diversity and horizontal vegetation structure within and among grassland, savanna, and woodland habitats. Vegetation structure, which is a key component of animal habitat, can thus be mapped using remotely sensed data. [Copyright &y& Elsevier]
- Published
- 2012
- Full Text
- View/download PDF
48. Computer vision based asphalt pavement segregation detection using image texture analysis integrated with extreme gradient boosting machine and deep convolutional neural networks.
- Author
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Hoang, Nhat-Duc and Tran, Van-Duc
- Subjects
- *
ASPHALT pavements , *CONVOLUTIONAL neural networks , *IMAGE analysis , *EDGE detection (Image processing) , *DEEP learning , *COMPUTER vision , *AUTOMATIC identification - Abstract
• Propose a computer vision method for detecting asphalt pavement segregation. • Employ image texture analysis for characterizing pavement surface condition. • Extreme gradient boosting machine and deep neural network are used for classification. • Attractive repulsive center-symmetric local binary pattern is used for texture computation. • XGBoost has achieved the best detection accuracy with accuracy rate = 0.95. Aggregate segregation is a major form of defect that accelerates the pavement deterioration rate. Therefore, asphalt pavement segregation needs to be detected accurately and early during the quality survey process. This study proposes and verifies a computer vision based method for automatic identification of aggregate segregation. The new method includes Extreme Gradient Boosting Machine integrated with Attractive Repulsive Center-Symmetric Local Binary Pattern (ARCSLBP-XGBoost) and Deep Convolutional Neural Network (DCNN). Experimental results obtained from a repetitive random data sampling process with 20 runs show that the ARCSLBP-XGBoost is a capable approach for detecting asphalt pavement segregation with outstanding performance measurement metrics (classification accuracy rate = 0.95, precision = 0.93, recall = 0.98, and F1 score = 0.95). [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
49. Colour and image texture analysis in classification of commercial potato chips
- Author
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Mendoza, Fernando, Dejmek, Petr, and Aguilera, José M.
- Subjects
- *
POTATO chips , *PRODUCT quality , *COLOR , *CONSUMER behavior - Abstract
Abstract: The images of commercial potato chips were evaluated for various colour and textural features to characterize and classify the appearance and to model the quality preferences of a group of consumers. Features derived from the image texture contained better information than colour features to discriminate both the quality categories of chips and consumers’ preferences. Entropy of a ∗ and V and energy of b ∗ from images of the total chip surface, average and variance of H and correlation of V from the images of spots and/or defects (if they are present), and average of L ∗ from clean images (chips free of spots and/or defects) showed the best correspondence with the four proposed appearance quality groups (A: ‘pale chips’, B: ‘slightly dark chips’, C: ‘chips with brown spots’, and D: ‘chips with natural defects’), giving classification rates of 95.8% for training data and 90% for validation data when linear discriminant analysis (LDA) was used as a selection criterion. The inclusion of independent colour and textural features from images of brown spots and/or defects and their clean regions of chips improved the resolution of the classification model and in particular to predict ‘chips with natural defects’. Consumers’ preferences showed that in spite of the ‘moderate’ agreement among raters (Kappa-value =0.51), textural features have potential to model consumer behaviour in the respect of visual preferences of potato chips. A stepwise logistic regression model was able to explain 86.2% of the preferences variability when classified into acceptable and non-acceptable chips. [Copyright &y& Elsevier]
- Published
- 2007
- Full Text
- View/download PDF
50. High-resolution image texture as a predictor of bird species richness
- Author
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St-Louis, Véronique, Pidgeon, Anna M., Radeloff, Volker C., Hawbaker, Todd J., and Clayton, Murray K.
- Subjects
- *
HABITATS , *STANDARD deviations , *BIOTIC communities , *DISTRIBUTION (Probability theory) - Abstract
Abstract: We tested image texture as a predictor of bird species richness in a semi-arid landscape of New Mexico. Bird species richness was summarized from 10-min point counts conducted at 12 points within 42 plots (108 ha each) from 1996 to 1998. We calculated 14 first- and second-order texture measures in eight different window sizes on a set of digital orthophotos acquired in 1996. For each of the 42 plots, we summarized mean and standard deviation of each texture value within multiple window sizes. The relationship between image texture and average bird species richness was assessed using linear regression models. Single image texture measures such as the standard deviation described up to 57% of the variability in species richness. Coupling multiple measures of texture or coupling elevation with a single texture measure described up to 63% of the variability in bird species richness. Models incorporating two measures of texture and coarse habitat type described 76% of the variability in bird species richness. These results show that image texture analysis is a very promising tool for characterizing habitat structure and predicting patterns of species richness in semi-arid ecosystems. This method has several advantages over methods that rely on classified imagery, including cost-effectiveness, incorporation of within-habitat vegetation variability, and elimination of errors associated with boundary delineation. [Copyright &y& Elsevier]
- Published
- 2006
- Full Text
- View/download PDF
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