基于改进Deep-Sort算法的车站通道双向客流跟踪与统计分析

Jianfan Wu, Zhengyu Xie, Yong Qin, L. Jia, Ling Guan
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引用次数: 1

摘要

综合枢纽站的正常运行对整个城市交通网络的安全运行具有重要意义。准确监测车站客流运行状态是实现客流科学管理和控制的根本依据。针对车站通道客流准确实时检测的迫切需求,提出了一种基于yolov7的改进Deep-Sort算法,用于综合枢纽站通道双向客流的检测与跟踪。在Yolov7检测算法的基础上,引入SimAM注意机制,提高通道客流检测的准确性。在深度排序跟踪算法的基础上,对卡尔曼滤波(KF)方法进行了优化,使目标的跟踪框更加精确。同时,利用Fast-ReID方法改进了目标的长期跟踪,从而提高了IDF1的价值。该算法可以实现车站通道双向客流的实时、准确的检测与跟踪。在发生异常情况时,车站工作人员可以迅速作出反应,提高车站的运行安全性。
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Bi-directional passenger flow tracking and statistics analysis in station passageways based on an improved Deep-Sort algorithm
The normal operation of a integrated hub station is of great significance for the safe operation of the entire city’s transportation network. Accurately monitoring the passenger flow operation status of the station is the fundamental basis for achieving scientific management and control of passenger flow. In response to the urgent need for accurate and real-time detection of passenger flow in station passageways, a Yolov7-based improved Deep-Sort algorithm is proposed to detect and track bi-directional passenger flow in the passageways of integrated hub stations. Based on the Yolov7 detection algorithm, the SimAM attention mechanism was introduced to improve the accuracy of detecting passenger flow in the passageways. On the basis of the Deep-Sort tracking algorithm, the Kalman Filter (KF) method was optimized to make the tracking box of the target more accurate. Meanwhile, the Fast-ReID method was used to improve the long-term tracking of targets, thereby improving the value of IDF1. This algorithm can help to achieve real-time and accurate detection and tracking of bi-directional passenger flow in station passageways. In the event of an abnormal situation, the station staff can react rapidly to improve the station’s operational safety.
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