Lightweight refueling behavior recognition algorithm based on sequence diagrams

Dasheng Guan, Lei Wang, Zhijun Zhang, Cong Liu
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Abstract

Some specific, repetitive actions made by the staffs in the refueling work scenario at the airport can be considered as a way of information transmission, so it is necessary to carry out on-site automatic identification and monitoring of these specific actions to improve the level of supervision. This paper proposes a lightweight refueling behavior recognition algorithm applicable to the field based on video sequences. The algorithm firstly uses the YOLOv3 improved target detection network for human body detection. The resulting human body detection box is tracked using the target tracking algorithm, and the tracked human body sequence maps are input into the behavior classification algorithm based on time-space feature fusion to realize the fast and intelligent analysis of the behavior. The test results of deploying the algorithm to Hi3559A embedded equipment show that the recognition accuracy of the algorithm reached 94.68%, and the inference speed reached 22FPS, which can meet the needs of real-time behavior analysis and processing at the airport refueling site.
基于序列图的轻型加油行为识别算法
在机场加油工作场景中,工作人员所做的一些具体的、重复的动作可以看作是信息传递的一种方式,因此有必要对这些具体动作进行现场自动识别和监控,以提高监管水平。提出了一种适用于该领域的基于视频序列的轻型加油行为识别算法。该算法首先采用YOLOv3改进的目标检测网络进行人体检测。利用目标跟踪算法对生成的人体检测盒进行跟踪,将跟踪到的人体序列图输入到基于时空特征融合的行为分类算法中,实现对行为的快速智能分析。将该算法部署到Hi3559A嵌入式设备上的测试结果表明,该算法的识别准确率达到94.68%,推理速度达到22FPS,能够满足机场加油现场实时行为分析与处理的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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