Sge Net: Video Object Detection With Squeezed Gru And Information Entropy Map
Rui Su, Wenjing Huang, Haoyu Ma, Xiaowei Song, Jinglu Hu
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:13:23
Recently, deep learning based Video object detection has attracted more and more attention. % intro task Compared with object detection of static images, video object detection is more challenging due to the motion of objects, while providing rich temporal information. RNN-based algorithm is an effective way to enhance detection performance in videos with temporal information. However, most studies in this area only focus on the accuracy while ignoring the calculation cost and the number of parameters. In this paper, we propose an efficient method that combines channel-reduced convolutional GRU Squeezed GRU, and Information Entropy map for video object detection SGE-Net. The experimental results validate the accuracy improvement, computational savings of the Squeezed GRU, and superiority of the information entropy attention mechanism on the classification performance. The mAP has increased by 3.1 contrasted with the baseline, and the number of parameters has decreased from 6.33 million to 0.67 million compared with the standard GRU.