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Dynamic Object Recognition in Video Streams, essen- tial for advancements in video surveillance, autonomous systems, and robotics. Focusing on challenging scenarios like crowded- ness and rapid scene changes, the study introduces novel ob- ject detection and tracking techniques. Object segmentation in crowded scenes and trajectory analysis for simultaneous tracking in dense environments are explored, considering both immediate interactions and long-term movements. Adaptive object recognition algorithms, integrating event detection for rapid scene transitions, are investigated for their responsiveness. Additionally, the study incorporates advanced deep learning frameworks like Temporal Convolutional Networks (TCNs) and one-shot learning methods, enhancing the system’s adaptability to dynamic environments. Real- time processing efficiency is addressed through hardware accelera- tion and online learning strategies, contributing to the development of more efficient and adaptive dynamic object recognition systems for crowded and dynamic scenes. Index Terms—Computer Vision, Object recognition, Video, TCN, Robotics
Abhay Prasad (Mon,) studied this question.