location: Current position: Home >> Scientific Research >> Paper Publications

A fast occluded passenger detector based on MetroNet and Tiny MetroNet

Hits:

Indexed by:Journal Papers

Date of Publication:2020-09-01

Journal:INFORMATION SCIENCES

Included Journals:SCIE

Volume:534

Page Number:16-26

ISSN No.:0020-0255

Key Words:Video surveillance; Metro; Passengers' occlusion; Embedded system

Abstract:Metro passenger detection is always a significant task and a bottleneck in metro video surveillance system. Much recent research has demonstrated that Convolutional Neural Network (CNN) is more powerful than other machine learning algorithms in numerous computer vision tasks. Motivated by the research, this paper proposes MetroNet and Tiny MetroNet for detecting occluded metro passengers in metro embedded system with limited hardware resources. MetroNet consists of smaller CNN-SqueezeNet, Region Proposal Network (RPN) and Detection Head subnet. Besides, the repulsion loss is adopted to effectively prevent detection results from worsening caused by severe passengers' occlusion during training phase. On the other hand, considering that some platforms have more limited hardware resources, a simple version of the MetroNet named Tiny MetroNet is designed and a novel, tiny passenger feature network is proposed as backbone. Based on three datasets, two MetroNets are tested and compared to existing state-of-the-art detection networks on CPU and GPU mode. The experiment results demonstrate that MetroNet has real-time performance and better detection accuracy. Tiny MetroNet achieves fast detection speed and smaller model size with acceptable performance degradation. Even for the ARM embedded system, their performance is competitive and can meet the application requirements of high-speed metros. (C) 2020 Elsevier Inc. All rights reserved.

Next One:Adaptive feedback cancellation with prediction error method and howling suppression in train public address system