CVOct 29, 2021

Multi-target tracking for video surveillance using deep affinity network: a brief review

arXiv:2110.15674v1
Originality Synthesis-oriented
AI Analysis

It provides a review of existing methods for multi-target tracking in video surveillance, which is incremental as it summarizes prior work without introducing novel solutions.

This paper reviews state-of-the-art multi-target tracking models for video surveillance that use deep learning to address challenges like object detection and trajectory estimation, but does not present new results or numbers.

Deep learning models are known to function like the human brain. Due to their functional mechanism, they are frequently utilized to accomplish tasks that require human intelligence. Multi-target tracking (MTT) for video surveillance is one of the important and challenging tasks, which has attracted the researcher's attention due to its potential applications in various domains. Multi-target tracking tasks require locating the objects individually in each frame, which remains a huge challenge as there are immediate changes in appearances and extreme occlusions of objects. In addition to that, the Multitarget tracking framework requires multiple tasks to perform i.e. target detection, estimating trajectory, associations between frame, and re-identification. Various methods have been suggested, and some assumptions are made to constrain the problem in the context of a particular problem. In this paper, the state-of-the-art MTT models, which leverage from deep learning representational power are reviewed.

Foundations

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