11 results on '"Behçet Uğur Töreyin"'
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2. A multi-spectral myelin annotation tool for machine learning based myelin quantification [version 4; peer review: 2 approved]
- Author
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Abdulkerim Çapar, Dursun Ali Ekinci, Umut Engin Ayten, Sibel Çimen, Zeynep Aladağ, Behçet Uğur Töreyin, and Bilal Ersen Kerman
- Subjects
myelin annotation tool ,myelin quantification ,fluorescence images ,machine learning ,image analysis ,eng ,Medicine ,Science - Abstract
Myelin is an essential component of the nervous system and myelin damage causes demyelination diseases. Myelin is a sheet of oligodendrocyte membrane wrapped around the neuronal axon. In the fluorescent images, experts manually identify myelin by co-localization of oligodendrocyte and axonal membranes that fit certain shape and size criteria. Because myelin wriggles along x-y-z axes, machine learning is ideal for its segmentation. However, machine-learning methods, especially convolutional neural networks (CNNs), require a high number of annotated images, which necessitate expert labor. To facilitate myelin annotation, we developed a workflow and software for myelin ground truth extraction from multi-spectral fluorescent images. Additionally, to the best of our knowledge, for the first time, a set of annotated myelin ground truths for machine learning applications were shared with the community.
- Published
- 2023
- Full Text
- View/download PDF
3. A multi-spectral myelin annotation tool for machine learning based myelin quantification [version 3; peer review: 1 approved, 1 approved with reservations]
- Author
-
Abdulkerim Çapar, Sibel Çimen, Zeynep Aladağ, Dursun Ali Ekinci, Umut Engin Ayten, Bilal Ersen Kerman, and Behçet Uğur Töreyin
- Subjects
Software Tool Article ,Articles ,myelin annotation tool ,myelin quantification ,fluorescence images ,machine learning ,image analysis - Abstract
Myelin is an essential component of the nervous system and myelin damage causes demyelination diseases. Myelin is a sheet of oligodendrocyte membrane wrapped around the neuronal axon. In the fluorescent images, experts manually identify myelin by co-localization of oligodendrocyte and axonal membranes that fit certain shape and size criteria. Because myelin wriggles along x-y-z axes, machine learning is ideal for its segmentation. However, machine-learning methods, especially convolutional neural networks (CNNs), require a high number of annotated images, which necessitate expert labor. To facilitate myelin annotation, we developed a workflow and software for myelin ground truth extraction from multi-spectral fluorescent images. Additionally, to the best of our knowledge, for the first time, a set of annotated myelin ground truths for machine learning applications were shared with the community.
- Published
- 2022
- Full Text
- View/download PDF
4. A multi-spectral myelin annotation tool for machine learning based myelin quantification [version 2; peer review: 1 approved]
- Author
-
Abdulkerim Çapar, Sibel Çimen, Zeynep Aladağ, Dursun Ali Ekinci, Umut Engin Ayten, Bilal Ersen Kerman, and Behçet Uğur Töreyin
- Subjects
Software Tool Article ,Articles ,myelin annotation tool ,myelin quantification ,fluorescence images ,machine learning ,image analysis - Abstract
Myelin is an essential component of the nervous system and myelin damage causes demyelination diseases. Myelin is a sheet of oligodendrocyte membrane wrapped around the neuronal axon. In the fluorescent images, experts manually identify myelin by co-localization of oligodendrocyte and axonal membranes that fit certain shape and size criteria. Because myelin wriggles along x-y-z axes, machine learning is ideal for its segmentation. However, machine-learning methods, especially convolutional neural networks (CNNs), require a high number of annotated images, which necessitate expert labor. To facilitate myelin annotation, we developed a workflow and software for myelin ground truth extraction from multi-spectral fluorescent images. Additionally, to the best of our knowledge, for the first time, a set of annotated myelin ground truths for machine learning applications were shared with the community.
- Published
- 2022
- Full Text
- View/download PDF
5. A multi-spectral myelin annotation tool for machine learning based myelin quantification [version 1; peer review: 1 not approved]
- Author
-
Abdulkerim Çapar, Sibel Çimen Yetiş, Zeynep Aladağ, Dursun Ali Ekinci, Umut Engin Ayten, Bilal Ersen Kerman, and Behçet Uğur Töreyin
- Subjects
Software Tool Article ,Articles ,myelin annotation tool ,myelin quantification ,fluorescence images ,machine learning ,image analysis - Abstract
Myelin is an essential component of the nervous system and myelin damage causes demyelination diseases. Myelin is a sheet of oligodendrocyte membrane wrapped around the neuronal axon. In the fluorescent images, experts manually identify myelin by co-localization of oligodendrocyte and axonal membranes that fit certain shape and size criteria. Because myelin wriggles along x-y-z axes, machine learning is ideal for its segmentation. However, machine-learning methods, especially convolutional neural networks (CNNs), require a high number of annotated images, which necessitates expert labor. To facilitate myelin annotation, we developed a workflow and a software for myelin ground truth extraction from multi-spectral fluorescent images. Additionally, we shared a set of myelin ground truths annotated using this workflow.
- Published
- 2020
- Full Text
- View/download PDF
6. List of contributors
- Author
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Tanvir Ahmad, Muhammed Fatih Akıl, Fayadh Alenezi, Samet Ayaltı, Aydin Ayanzadeh, Muhammed Balıkçi, Özge Nur Belli, Engin Bozaba, Sheryl Brahnam, Sercan Çayır, K. Chandhru, Shreyasi Roy Chowdhury, Daniela Cuza, Berkan Darbaz, Yusuf Sait Erdem, Ömer Faruk Ertuğrul, Ihar Filipovich, Leonardo Obinna Iheme, Ümit İnce, R. Karthik, Cavit Kerem Kayhan, Yash Khare, Vassili Kovalev, Huseyin Kusetogulları, Andrea Loreggia, Alessandra Lumini, Sarfaraz Masood, Berkay Mayalı, Susmita Mazumdar, Kenan Morani, Abdullah-Al Nahid, Loris Nanni, Sevgi Önal, Gülşah Özsoy, Şaban Öztürk, Abdulhalık Oğuz, Devrim Pesen Okvur, Kemal Polat, Ahmedkhan Radzhabov, Md. Johir Raihan, Samta Rani, Umit Senturk, Eduard Snezhko, Gizem Solmaz, Makesh Srinivasan, Eren Tekin, Fatma Tokat, Behçet Uğur Töreyin, Mahmut Uçar, Devrim Ünay, Burak Uzel, Özden Yalçın Özyusal, Çisem Yazıcı, and Ibrahim Yucedag
- Published
- 2023
- Full Text
- View/download PDF
7. Focus-and-Detect: A small object detection framework for aerial images
- Author
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Onur Can Koyun, Reyhan Kevser Keser, İbrahim Batuhan Akkaya, and Behçet Uğur Töreyin
- Subjects
FOS: Computer and information sciences ,Artificial Intelligence (cs.AI) ,Computer Science - Artificial Intelligence ,Computer Vision and Pattern Recognition (cs.CV) ,Signal Processing ,Computer Science - Computer Vision and Pattern Recognition ,Computer Vision and Pattern Recognition ,Electrical and Electronic Engineering ,Software - Abstract
Despite recent advances, object detection in aerial images is still a challenging task. Specific problems in aerial images makes the detection problem harder, such as small objects, densely packed objects, objects in different sizes and with different orientations. To address small object detection problem, we propose a two-stage object detection framework called "Focus-and-Detect". The first stage which consists of an object detector network supervised by a Gaussian Mixture Model, generates clusters of objects constituting the focused regions. The second stage, which is also an object detector network, predicts objects within the focal regions. Incomplete Box Suppression (IBS) method is also proposed to overcome the truncation effect of region search approach. Results indicate that the proposed two-stage framework achieves an AP score of 42.06 on VisDrone validation dataset, surpassing all other state-of-the-art small object detection methods reported in the literature, to the best of authors' knowledge., 12 pages, 6 figures
- Published
- 2022
- Full Text
- View/download PDF
8. Sparse coding of hyperspectral imagery using online learning
- Author
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Behçet Uğur Töreyin and İrem Ülkü
- Subjects
Computer science ,business.industry ,Online learning ,Hyperspectral imaging ,Pattern recognition ,Data_CODINGANDINFORMATIONTHEORY ,Discriminative model ,Hyperspectral image compression ,Compression (functional analysis) ,Signal Processing ,Multimedia information systems ,Anomaly detection ,Computer vision ,Artificial intelligence ,Electrical and Electronic Engineering ,business ,Neural coding - Abstract
Sparse coding ensures to express the data in terms of a few nonzero dictionary elements. Since the data size is large for hyperspectral imagery, it is reasonable to use sparse coding for compression of hyperspectral images. In this paper, a hyperspectral image compression method is proposed using a discriminative online learning-based sparse coding algorithm. Compression and anomaly detection tests are performed on hyperspectral images from the AVIRIS dataset. Comparative rate–distortion analyses indicate that the proposed method is superior to the state-of-the-art hyperspectral compression techniques.
- Published
- 2015
- Full Text
- View/download PDF
9. Methods and Techniques for Fire Detection : Signal, Image and Video Processing Perspectives
- Author
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A. Enis Cetin, Bart Merci, Osman Günay, Behçet Ugur Töreyin, Steven Verstockt, A. Enis Cetin, Bart Merci, Osman Günay, Behçet Ugur Töreyin, and Steven Verstockt
- Subjects
- Fire prevention--Equipment and supplies, Fire detectors, Fire alarms, Fire prevention
- Abstract
This book describes the signal, image and video processing methods and techniques for fire detection and provides a thorough and practical overview of this important subject, as a number of new methods are emerging. This book will serve as a reference for signal processing and computer vision, focusing on fire detection and methods for volume sensors. Applications covered in this book can easily be adapted to other domains, such as multi-modal object recognition in other safety and security problems, with scientific importance for fire detection, as well as video surveillance. Coverage includes: - Camera Based Techniques - Multi-modal/Multi-sensor fire analysis - Pyro-electric Infrared Sensors for Flame Detection - Large scale fire experiments - Wildfire detection from moving aerial platforms - The basics of signal, image and video processing based fire detection - The latest fire detection methods and techniques using computer vision - Non-conventional fire detectors: Fire detection using volumetric sensors - Recent large-scale fire experiments and their results - New and emerging technologies and areas for further research
- Published
- 2016
10. Introduction
- Author
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A. Enis Çetin, Bart Merci, Osman Günay, Behçet Uğur Töreyin, and Steven Verstockt
- Published
- 2016
- Full Text
- View/download PDF
11. Vehicle License Plate Detector in Compressed Domain
- Author
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Muhammet Sebul Beratoglu and Behcet Ugur Toreyin
- Subjects
Compressed domain image/video analysis ,H.265 ,license plate detection ,YOLO ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Data compression techniques allow data size to be reduced prior to data transmission and involve decompression upon transfer. This study shows for the first time that license plate (LP) detection can be accomplished without full decompression of the encoded data. Therefore, by determining in advance which images are required for LP recognition, computational costs of the system can be reduced. The proposed approach is realized on High Efficiency Video Coding (HEVC) based compressed video sequences. Two methods are provided that generate images from HEVC attributes. Fully decoded pixel domain images are also generated for comparative purposes from the same encoded data. The YOLO V3 Tiny Object Detector is used in order to detect LPs in the generated images. EnglishLP, a public dataset, is used to interpret the findings in terms of speed and precision and for comparison with previous studies. An additional contribution of the paper is that a new compressed domain LP database has been created and made publicly available, comprising images captured by a commercial license plate recognition system. Using at least two-orders-of-magnitude less amount of data, the proposed compressed domain LP detector achieved similar precision and recall values to those of the state-of-the-art LP detection schemes tested on both datasets. Moreover, the proposed method results in more than 30% saving in inference time. The results suggest that the proposed method can be utilized for rapid video archive searching applications.
- Published
- 2021
- Full Text
- View/download PDF
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