21 results on '"Wang, Liguo"'
Search Results
2. Hyperspectral Anomaly Detection Based on Multiscale Central Difference Convolution Network.
- Author
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Wang, Xiaoyi, Wang, Liguo, Vizziello, Anna, and Gamba, Paolo
- Abstract
Convolutional neural networks (CNNs) have a strong capacity to extract deep-level features from data. However, the standard convolution (SC) only considers the intensity information and ignores the spatial gradient information. Since spatial difference features are more robust to illumination invariance, this letter proposes a multiscale central difference convolutional (MSCDC) network for hyperspectral anomaly detection. Specifically, we use central difference convolution (CDC) to combine intensity and gradient information. This solution improves the representation ability of hyperspectral images (HSIs) and enhances the difference between the background and the anomalies. Furthermore, to fully utilize local spatial information and adapt to targets with different sizes, CDC kernels of three different sizes are used to capture high-, mid-, and low-level features, respectively. Finally, an SC is used to fuse multiscale features and obtain more reliable spatial information. Compared with five popular hyperspectral anomaly detection methods on four real-world HSI datasets, the proposed MSCDC exhibits excellent performance. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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3. SPCNet: A Subpixel Convolution-Based Change Detection Network for Hyperspectral Images With Different Spatial Resolutions.
- Author
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Wang, Lifeng, Wang, Liguo, Wang, Heng, Wang, Xiaoyi, and Bruzzone, Lorenzo
- Subjects
SPATIAL resolution ,PIXELS ,FEATURE extraction ,DEEP learning - Abstract
The very high spectral resolution in hyperspectral images (HSIs) offers an opportunity to detect subtle land-cover changes. However, the availability of HSIs acquired from different platforms requires the development of change detection (CD) methods capable of processing HSIs with different spatial resolutions. In this article, we propose a general end-to-end subpixel convolution-based residual network (SPCNet) to accomplish the CD task between high spatial resolution (HR) and low spatial resolution (LR) HSIs. To effectively tackle the resolution matching issue, a super-resolution (SR) block with an efficient subpixel convolution layer is introduced to upscale the LR feature maps into HR maps. The subpixel convolution layer can fully explore the subpixel context information by learning an array of upscaling filters. Moreover, the designed SPC module is embedded into the LR branch to generate more discriminative representations. More importantly, the SPC module as a plug-and-play unit has the potential to be embedded into other baseline networks to enhance the feature learning capability. Experimental results on four HSI datasets demonstrate the effectiveness of the proposed SPCNet. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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4. Research on Combat Effectiveness Based on Internet of Things
- Author
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Wang, Liguo, primary, Wu, Yong, additional, Zhang, Song, additional, Huang, Yinghua, additional, and Zhang, Xuanzi, additional
- Published
- 2023
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5. SFFGL: A Semantic Feature Fused Global Learning Framework for Multiclass Change Detection in Hyperspectral Images.
- Author
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Wang, Lifeng, Zhang, Junguo, Wang, Liguo, and Bruzzone, Lorenzo
- Abstract
Deep learning techniques have shown increasing potential in change detection (CD) in hyperspectral images (HSIs). However, most deep learning-based existing methods for HSI CD follow a patch-based local learning framework and concentrate on binary CD. In this letter, we propose an end-to-end semantic feature fused global learning (SFFGL) framework for HSI multiclass CD (MCD). In SFFGL, a global spatialwise fully convolutional network (FCN), which introduces a spatial attention mechanism (PAM) between encoder and decoder, is designed to effectively exploit the global spatial information from the whole HSIs and achieve patch-free inference. PAM can adaptively extract global spatialwise feature representation. In the model training stage, a global hierarchical (GH) sampling strategy is introduced to obtain diverse gradients during backpropagation for more robust performance. The semantic–spatial feature fusion ($\text{S}^{2}\text{F}^{2}$) unit is designed to effectively fuse the enhanced spatial context information in the encoder and the semantic information in the decoder. More importantly, a semantic feature enhancement module (SEM) is proposed to weaken the influence of the unchanged regional background on the change regional foreground, thus further improving the accuracy. Experimental results on two benchmark HSI datasets demonstrate the effectiveness of the proposed SFFGL. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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6. An Approach for Saving Energy Control of an IM Supplied by the Battery-Powered System Based on Branch-and-Bound Theory.
- Author
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Wang, Liguo, Qiao, Jinxin, Zhang, Yinfeng, and Zhu, Yiying
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INDUCTION motors ,FLOW batteries ,ENERGY consumption ,ELECTRIC power ,VOLTAGE - Abstract
In this article, in order to improve the power quality and decrease the consumed power of an induction motor (IM), which is supplied by an alternate battery-powered system, an algorithm that can be used to save its energy consumption has been proposed. The control mechanism is used to reduce the wasted energy caused by IMs start-up current based on bounding its optimal starting voltage. The proposed algorithm includes two parts: First, use branch-and-bound theory to derive the control rule of the IMs start voltage and give corresponding offline calculation procedure framework. Second, according to the control rule, adjust online voltage of the zinc–bromine flow battery, which is used to feed the IM. Due to the proposed approach, the minimum start-up voltage of the battery-powered system can be predicted and by which one the IMs surge current has been suppressed online. Moreover, the relationship of the output voltage of the battery and inverter supply to the load current has been derived by modeling the battery-powered system. The experiments demonstrate that compared with before optimization, the amount of energy consumption of the IM supplied by zinc–bromine flow battery decreases by 8.5% and corresponding indicator parameters of the power quality can reach the standard IEC TS62749-2015. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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7. Investigating the Impacts of Climate Change and Natural Disasters on the Feasibility of Power System Resilience
- Author
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Younesi, Abdollah, primary, Wang, Zongjie, additional, and Wang, Liguo, additional
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- 2022
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8. Hyperspectral Image Classification Based On Fuzzy Nonparallel Support Vector Machine
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Liu, Guangxin, primary, Wang, Liguo, additional, Fei, Lei, additional, Liu, Danfeng, additional, and Yang, Jinghui, additional
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- 2022
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9. Local Spatial–Spectral Information-Integrated Semisupervised Two-Stream Network for Hyperspectral Anomaly Detection.
- Author
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Wang, Xiaoyi, Wang, Liguo, and Wang, Qunming
- Subjects
ANOMALY detection (Computer security) ,INTRUSION detection systems (Computer security) ,FALSE alarms ,IMAGE reconstruction - Abstract
Hyperspectral images (HSIs) always contain abundant spectral and spatial information. Most of the existing deep learning-based hyperspectral anomaly detection methods consider spectral differences between the background and anomalies, and the local spatial information is usually ignored. To make complete use of the spatial–spectral information, this article proposed a local spatial–spectral information-integrated semisupervised two-stream network (LS3T-Net) for hyperspectral anomaly detection. The two-stream network comprises an adaptive convolution and fully connected network and a variational autoencoder (VAE). The adaptive convolution and fully connected network is used to extract the local spatial features of patches, while VAE is trained to learn spectral information close to the background pixels. Furthermore, the detection maps from the two-stream network are incorporated through a process combining the benefits of spatial learning and spectral learning. This enhances the ability to separate the background and anomalies and suppress the false alarm. The experimental results for six real HSI datasets reveal that LS3T-Net can produce more accurate detection results than seven popular benchmark methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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10. RSCNet: A Residual Self-Calibrated Network for Hyperspectral Image Change Detection.
- Author
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Wang, Liguo, Wang, Lifeng, Wang, Qunming, and Bruzzone, Lorenzo
- Subjects
CONVOLUTIONAL neural networks ,DEEP learning - Abstract
Deep learning-based methods (e.g., convolutional neural network (CNN)-based methods) have shown increasing potential in hyperspectral image (HSI) change detection (CD). However, the recent advances in CNN-based methods in HSI CD tasks are mostly devoted to designing more complex architectures or adding additional hand-designed blocks. This increases the number of parameters making model training difficult. In this article, we propose an end-to-end residual self-calibrated network (RSCNet) to increase the accuracy of HSI CD. To fully exploit the spatial information, the proposed RSCNet method adaptively builds interspatial and interspectral dependencies around each spatial location with fewer extra parameters and reduced complexity. Moreover, the introduced self-calibrated convolution (SCConv) helps to generate more discriminative representations by heterogeneously exploiting convolutional filters nested in the convolutional layer. The designed RSC module can explicitly incorporate richer information by introducing response calibration operation. The experiments on four bitemporal HSI datasets demonstrated that the proposed RSCNet method is more accurate than ten widely used benchmark methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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11. Research on High-Power Rapid Charge Approach for EV Based on Clustered Multi-node Learning Gaussian Process
- Author
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Wang, Liguo, primary, Tian, Zhenteng, additional, Hu, Yuanting, additional, Yu, Chunlai, additional, Wang, Zongjie, additional, and Gao, Feng, additional
- Published
- 2022
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12. Intelligent Professional Competitive Basketball Training (IPCBT): from Video based Body Tracking to Smart Motion Prediction
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Wang, Liguo, primary and Xue, Qinbo, additional
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- 2022
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13. A Double Dictionary-Based Nonlinear Representation Model for Hyperspectral Subpixel Target Detection.
- Author
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Wang, Xiaoyi, Wang, Liguo, Wu, Hao, Wang, Jiawen, Sun, Kaipeng, Lin, Anqi, and Wang, Qunming
- Subjects
PIXELS ,SPATIAL resolution ,MATRIX decomposition ,OBJECT recognition (Computer vision) ,FEATURE extraction - Abstract
Due to the limitations of hardware technology and budget constraints, there always exists a tradeoff between spatial and spectral resolutions in a hyperspectral image (HSI). Because of the limited spatial resolution, mixed pixels are a common issue in HSIs, and consequently, some targets appear as subpixels. The effectiveness of hyperspectral target detection is affected greatly by the subpixel targets, especially when the size of the targets is small. In this article, we proposed a double dictionary-based nonlinear representation model for hyperspectral subpixel target detection (DDNRTD). DDNRTD represents HSIs with a nonlinear model based on background and target dictionaries, which fully considers the spatial property of background and targets and can separate background and targets reliably, especially for small-sized subpixel targets. In addition, we designed an over-completed background dictionary construction strategy to represent the background part more effectively, which integrates spectral angle distance (SAD) with sparse representation. Experiments on two simulated and five real HSI datasets showed that the proposed DDNRTD method produced more accurate detection results than six state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
14. Research on Teaching Mode of Intelligent Learning in Universities Based on 5G Mobile Network
- Author
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Wang, Liguo, primary, Wang, Yufei, additional, Chen, Ao, additional, Zhao, Jiayi, additional, and Jin, Ting, additional
- Published
- 2021
- Full Text
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15. SSA-SiamNet: Spectral–Spatial-Wise Attention-Based Siamese Network for Hyperspectral Image Change Detection.
- Author
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Wang, Lifeng, Wang, Liguo, Wang, Qunming, and Atkinson, Peter M.
- Subjects
ARTIFICIAL neural networks ,CONVOLUTIONAL neural networks - Abstract
Deep learning methods, especially convolutional neural network (CNN)-based methods, have shown promising performance for hyperspectral image (HSI) change detection (CD). It is acknowledged widely that different spectral channels and spatial locations in input image patches may contribute differently to CD. However, they are treated equally in existing CNN-based approaches. To increase the accuracy of HSI CD, we propose an end-to-end Siamese CNN (SiamNet) with a spectral–spatial-wise attention (SSA-SiamNet) mechanism. The proposed SSA-SiamNet method can emphasize informative channels and locations and suppress less informative ones to refine the spectral–spatial features adaptively. Moreover, in the network training phase, the weighted contrastive loss function is used for more reliable separation of changed and unchanged pixels and to accelerate the convergence of the network. SSA-SiamNet was validated using four groups of bitemporal HSIs. The accuracy of CD using the SSA-SiamNet was found to be consistently greater than for ten benchmark methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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16. The Moderating Role of Corruption in the Inverted U-Shaped Relationship Between Red Tape and Private Investment in PPP Projects: Evidence From Developing Countries.
- Author
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Zhao, Wanyu, Wang, Liguo, Ning, Xin, Ju, Lei, and Mu, Yujia
- Subjects
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RED tape , *TRANSPARENCY in government , *CORRUPTION , *PUBLIC-private sector cooperation , *ADHESIVE tape , *INDIVIDUAL investors , *ATHLETIC tape ,DEVELOPING countries - Abstract
Government environment is the main determinant in attracting private investment into public–private partnership (PPP) projects, especially in developing countries. Red tape, an indicator of a government's efficiency, plays a critical role in private investment in PPP projects. Reasonable levels of red tape can enhance government transparency and promote private investment, while excessive red tape usually represents low governance efficiency and imposes further risk on private investors. This article explores how developing countries’ red tape affects private investment in PPP projects by examining the moderating effect of corruption. Analyzing a database of 308 PPP projects in 111 developing countries, the study reveals an inverted U-shaped relationship between red tape and private investment. Corruption weakens the positive relationship between red tape and private investment at low levels of red tape and mitigates their negative relationship at high levels. The study integrates the inconsistent results of previous research that postulated either a positive or negative relationship between red tape and private investment by proposing a nonlinear model. It also theorizes the moderating effect of corruption based on real management practice and illustrates its mechanism in absorbing private investment in PPP projects. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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17. Resolution Improvement in a High-Power Magnetic Resonance Imaging Gradient Power Amplifier.
- Author
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Zeng, Keqiu, Popovic, Jelena, Rietveld, Gert, Mao, Saijun, Yu, Hui, Wang, Liguo, Liu, Kun, and Zhou, Zhiding
- Subjects
POWER amplifiers ,MAGNETIC resonance imaging ,INSULATED gate bipolar transistors ,TRANSISTORS - Abstract
High-resolution gradient power amplifiers are required to generate high-fidelity gradient fields in magnetic resonance imaging (MRI) systems. Various aspects of gradient power amplifiers have been the subject of research in the past years, however, systematic analysis and design methods for its resolution improvement have not been sufficiently addressed. This article addresses this research gap with comprehensive analysis and design methods for resolution improvement. First, a method for systematic resolution characterization of the MRI gradient power amplifier with gradient coil is proposed. Second, noise modeling with respect to the critical aspects in the system resolution degradation is developed and discussed. Third, the resolution improvement methods of bandwidth optimization, pseudorandom code modulation, and utilizing silicon carbide (SiC) switching power devices are proposed and analyzed, achieving a resolution at the one part in ${10^6}$ level. Finally, the resolution improvement methods are experimentally validated in a 1000 V/400 A SiC gradient power amplifier. The experimental results show a 3.6 times reduction in the peak spurious signals and resolution improvement at all current levels and pulse lengths, compared to a conventional insulated gate bipolar transistor GPA. These results prove the validity of the proposed methods for resolution improvement in a high-power MRI gradient power amplifier, enabling future high-power and high-resolution amplifier designs. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
18. High-Precision Control Method for High-Power MRI Gradient Power Amplifiers.
- Author
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Zeng, Keqiu, Mao, Saijun, Rietveld, Gert, Popovic, Jelena, Yu, Hui, Wang, Liguo, Liu, Kun, and Zhou, Zhiding
- Subjects
POWER amplifiers ,MAGNETIC resonance imaging ,PULSE width modulation - Abstract
In magnetic resonance imaging (MRI), high-power gradient power amplifiers (GPAs) are required to drive the gradient coils to generate strong and high-fidelity gradient fields. High precision is an essential requirement for the GPAs since precision directly impacts MRI imaging quality. Various aspects of the GPA have been the subject of research in the past years; however, high-precision GPA control that meets the stringent requirements of MRI applications is still a challenge. This article proposes a novel multi-rational-delay variables state space control method and an efficient out-of-band signal injection method to achieve GPA control accuracy at the level of one part per million at MVA output power levels. First, a systematic modeling and design method of the state space controller for high-power GPA is introduced utilizing state vectors with multi-rational-delay variables. This method improves the GPA dynamic performance significantly. Second, an efficient out-of-band signal injection method is presented to further improve the control precision at low output current, enabling the fulfillment of the challenging high-precision MRI requirements over the full GPA output range. Finally, the high-precision control method is validated in a GPA demonstrator with 500 A/1000 V output. Key results are a 30% improvement in current pulse reproducibility with respect to the conventional control method and a factor of 2.5 less noise at low currents. These experimental results validate the proposed novel method for the high-precision control of GPAs in MRI applications and prove its capability to contribute to significantly improved MRI image quality. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
19. RSSGL: Statistical Loss Regularized 3-D ConvLSTM for Hyperspectral Image Classification.
- Author
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Wang, Liguo, Wang, Heng, Wang, Lifeng, Wang, Xiaoyi, Shi, Yao, and Cui, Ying
- Subjects
- *
DEEP learning , *FIELD programmable gate arrays , *GLOBAL method of teaching - Abstract
Studies on the classification of hyperspectral images (HSIs) based on deep learning are in full swing, especially the spectral–spatial dependent global learning (SSDGL) framework, which is both efficient and robust. However, the global convolutional long short-term memory (GCL) module under this framework fails to take full consideration of the spectral characteristics contained in HSIs, and the hierarchically balanced (H-B) sampling strategy introduced in this framework prevents the training process from converging smoothly. In this article, we develop a novel regularized spectral–spatial global learning (RSSGL) framework. Compared with SSDGL, the proposed framework mainly makes three improvements. Above all, aiming at the problem that the GCL module used in SSDGL cannot fully tap the local spectral dependence, we apply 3-D convolution to the gated units of long short-term memory (LSTM) as an alternative to the GCL module for adjacent and nonadjacent spectral dependencies learning. Furthermore, to extract the most discriminative features, an improved statistical loss regularization term is developed, in which we introduce a simple but effective diversity-promoting condition to make it more reasonable and suitable for deep metric learning in HSI classification. Finally, to effectively address the performance oscillation caused by the H-B sampling strategy, the proposed framework adopts an early stopping strategy to save and restore the optimal model parameters, making it more flexible and stable. Experiments conducted on three representative datasets show that the proposed RSSGL has superior classification performance compared with the existing relatively excellent research methods. The source code is released at https://github.com/swiftest/RSSGL. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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20. Hyperspectral Image Classification Based on Expansion Convolution Network.
- Author
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Shi, Cuiping, Liao, Diling, Zhang, Tianyu, and Wang, Liguo
- Subjects
HYPERSPECTRAL imaging systems ,CONVOLUTIONAL neural networks ,LAND cover ,CLASSIFICATION - Abstract
In recent years, convolutional neural networks (CNNs) have achieved excellent performance in hyperspectral image classification and have been widely used. However, the convolution kernel used in traditional CNN has the limitation of single scale, which is not conducive to the improvement of hyperspectral classification performance. In addition, training a classification network of high-dimensional data based on limited labeled samples is still one of the challenges of hyperspectral image classification. To solve the above problems, a hyperspectral image classification method based on expansion convolution network (ECNet) is proposed. The expansion convolution injects holes into the standard convolution kernel to expand the receptive field (RF), so as to extract more context features. Because the shallow features of hyperspectral images contain more location and detail information, while the deep features contain stronger semantic information, in order to further enhance the correlation between deep and shallow information, inspired by ResNet, a similar feedback block (SFB) is introduced on the basis of ECNet, and the deep features and shallow features are fused through this feedback mechanism. Thus, an improved version of ECNet method is obtained, which is called feedback ECNet (FECNet). This study was tested on four commonly used hyperspectral datasets [i.e., Indian Pine (IP), Pavia University (UP), Kennedy Space Center (KSC), and Salinas Valley (SV)] and on a higher resolution and complexly distributed land cover dataset (University of Houston (HT). The experimental results show that the proposed method has better classification performance than some state-of-the-art methods, which shows that FECNet has a certain potential in hyperspectral image classification. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
21. Lightweight Spectral–Spatial Attention Network for Hyperspectral Image Classification.
- Author
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Cui, Ying, Xia, Jinbiao, Wang, Zhiteng, Gao, Shan, and Wang, Liguo
- Subjects
CONVOLUTIONAL neural networks ,HYPERSPECTRAL imaging systems ,HABITAT suitability index models ,CLASSIFICATION - Abstract
Convolutional neural networks (CNNs) have exhibited extraordinary achievements in hyperspectral image (HSI) classification due to their detailed representation of features. However, the improvement of classification accuracy often leads to an evident increase in the complexity of the model, which makes it challenging for the model with the state-of-the-art performance to be applied in the actual scene. Considering MobileNetV3 as a lightweight feature extractor, this article proposes a model suitable for HSI classification based on MobileNetV3. To decrease the problem of massive redundant calculations in the existing spatial attention module, this article proposes a more concise and efficient spatial attention module based on the visual feature maps experiment. Besides, multiclass focal-loss is applied to solve the problem that the difficulty of classification varies for each sample. The experimental results demonstrate that in the case of using very few training sets, the proposed model can tremendously reduce the number of calculations and parameters while maintaining high accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
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