Prof. Sos S. Agaian
Distinguished Professor of CS at College of Staten Island
SPIE Involvement:
Conference Chair | Editorial Board Member: Journal of Electronic Imaging | Editor | Author | Instructor
Publications (265)

Proceedings Article | 8 June 2024 Presentation
Proceedings Volume 13033, 130330C (2024) https://doi.org/10.1117/12.3023215
KEYWORDS: Ocean optics, Synthetic aperture radar, Image enhancement, Image quality, Visualization, Speckle, Pollution, Natural disasters, Image contrast enhancement, Environmental monitoring

Proceedings Article | 7 June 2024 Poster + Paper
Laura Kaplan, Vladimir Frants, Sos Agaian
Proceedings Volume 13033, 130330M (2024) https://doi.org/10.1117/12.3020191

Proceedings Article | 7 June 2024 Poster + Paper
Proceedings Volume 13033, 130330K (2024) https://doi.org/10.1117/12.3014452
KEYWORDS: Computer vision technology, Image analysis, Image enhancement, Deep learning, Machine learning, Image quality, Light sources and illumination, Transportation, Intelligence systems, Image processing

Proceedings Article | 7 June 2024 Presentation + Paper
Proceedings Volume 13033, 130330A (2024) https://doi.org/10.1117/12.3014027
KEYWORDS: Image segmentation, RGB color model, Agriculture, Hyperspectral imaging, Deep learning, Multispectral imaging, Chlorophyll

Proceedings Article | 7 June 2024 Poster + Paper
Proceedings Volume 13033, 130330L (2024) https://doi.org/10.1117/12.3019864
KEYWORDS: Adversarial training, Education and training, Image processing, Defense and security, Data modeling, Image restoration, Convolution, Image enhancement, Transformers, Image quality

Showing 5 of 265 publications
Proceedings Volume Editor (23)

SPIE Conference Volume | 27 June 2024

SPIE Conference Volume | 25 July 2023

SPIE Conference Volume | 6 July 2022

SPIE Conference Volume | 6 May 2021

Showing 5 of 23 publications
Conference Committee Involvement (41)
Multimodal Image Exploitation and Learning 2025
13 April 2025 | Orlando, Florida, United States
Multimodal Image Exploitation and Learning 2024
22 April 2024 | National Harbor, Maryland, United States
Multimodal Image Exploitation and Learning 2023
1 May 2023 | Orlando, Florida, United States
Multimodal Image Exploitation and Learning 2022
4 April 2022 | Orlando, Florida, United States
Multimodal Image Exploitation and Learning 2021
12 April 2021 | Online Only, Florida, United States
Showing 5 of 41 Conference Committees
Course Instructor
SC1343: Quaternion Neural Networks for Robust Scene Perception
Accurate environmental perception is essential for ensuring the safe operation of autonomous vehicles and robots. However, unpredictable factors like illumination, noise, and adverse weather conditions can significantly impact the performance of autonomous technologies, particularly in critical applications such as navigation and self-driving. Deep learning is one potential solution for object detection and scene perception problems, which can enable algorithm-driven and data-driven cars. This course introduces Quaternion Neural Networks (QNNs), a novel framework for robust scene perception, especially in adverse weather conditions. QNNs leverage quaternion numbers to process multidimensional inputs, capture internal dependencies, and improve scene segmentation and object detection under challenging scenarios. The talk covers the basics, such as quaternion convolution and QNN transformers. It highlights their application in scene perception for self-driving cars under foggy, cloudy, and rainy environments. Attendees will see how QNNs surpass real-valued networks in weather removal, scene segmentation, and detection tasks. It will also discuss the recent trends in these technologies and the associated commercial impact and opportunities.
SC1299: Artificial Intelligence for Computer Vision Applications
Artificial Intelligence (AI) has become everywhere in our society, with applications in various fields such as search engines, image recognition, security systems, medical diagnosis, drones, and self-driving cars. One of the core areas of AI is computer vision, which involves teaching machines to interpret and understand images and videos. This course will introduce cutting edge machine learning and deep learning techniques, focusing on creating and customizing convolutional neural networks (CNNs) in real and quaternion domains. The course will cover (i) the fundamental components that drive modern deep learning systems for computer vision, (ii) the possibilities and limitations of deep learning methods, and (iii) the applications of deep learning to various problems in computer vision, including emerging topics.
SC926: Secure Multimedia Communication & Systems
Processing, transmission, storage, and distribution of digital multimedia data have become the major tasks of today's Internet and operating systems, and will continue to be the major driving strength to networking and systems research in the future. Modern advancements in information technology have enabled pervasive uses of digital multimedia data in a variety of scientific, government, business, and consumer applications. The digital nature of the information also allows individuals to manipulate, duplicate or access information beyond the terms and conditions agreed upon in a given transaction. Multimedia security involves the protection of digital audio, video and images against illegal access, tampering, piracy, storage, and transmission. The goal of the course is to introduce the theory and methods of multimedia communication & security systems: these include encryption, steganographic (information hiding), and watermarking systems. The following major areas will be covered in this class – Multimedia representation systems and file formats; state-of-the-art methods and techniques in this area; multimedia security systems applications. Future directions and open problems/issues will be also discussed.
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