A Review of Video Object Detection: Datasets, Metrics and Methods release_qyp2b5guovftplzmmmnec33bdm

by Haidi Zhu, haoran wei, Baoqing Li, Xiaobing Yuan, Nasser Kehtarnavaz

Published in Applied Sciences by MDPI AG.

2020   Volume 10, Issue 21, p7834

Abstract

Although there are well established object detection methods based on static images, their application to video data on a frame by frame basis faces two shortcomings: (i) lack of computational efficiency due to redundancy across image frames or by not using a temporal and spatial correlation of features across image frames, and (ii) lack of robustness to real-world conditions such as motion blur and occlusion. Since the introduction of the ImageNet Large Scale Visual Recognition Challenge (ILSVRC) in 2015, a growing number of methods have appeared in the literature on video object detection, many of which have utilized deep learning models. The aim of this paper is to provide a review of these papers on video object detection. An overview of the existing datasets for video object detection together with commonly used evaluation metrics is first presented. Video object detection methods are then categorized and a description of each of them is stated. Two comparison tables are provided to see their differences in terms of both accuracy and computational efficiency. Finally, some future trends in video object detection to address the challenges involved are noted.
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