Passenger Flow Statistics Algorithm of Scenic Spots Based on Multi-Target Tracking

Gui Xiangquan, Wang Ruipeng, Li Li
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Abstract

According to the real-time and accuracy requirements of obtaining passenger flow by surveillance videos in scenic spot, a model based on deep learning is proposed. Aided by Yolov4 and Deep Sort, passenger flow is counted by detection and tracking tourists. Aiming at the real-time requirement, the model compression method is used to replace the backbone network of Yolov4 with lightweight network mobileNetv3 to improve the detection speed. For the accuracy of the model, a detection scale is used to Yolov4 for extracting shallow features and the features are concatenated with deep features. Furthermore, Soft-NMS is used to process the detection results. The purpose of these improvements is to solve the dense tourists and small target problems in the surveillance videos. Then Deep Sort tracks the tourists target and obtains passenger flow information in the scenic spot. Through the experiment of the model in the surveillance videos, it is verified that this model meets the real-time requirements and has high accuracy in passenger flow statistics.
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基于多目标跟踪的景区客流统计算法
针对景区监控视频获取客流的实时性和准确性要求,提出了一种基于深度学习的模型。在Yolov4和Deep Sort的帮助下,通过检测和跟踪游客来统计客流量。针对实时性要求,采用模型压缩方法,将Yolov4骨干网替换为轻量级网络mobileNetv3,提高检测速度。为了提高模型的准确性,采用Yolov4检测尺度提取浅层特征,并将浅层特征与深层特征串联。此外,使用Soft-NMS对检测结果进行处理。这些改进的目的是为了解决监控视频中游客密集,目标小的问题。然后Deep Sort对游客目标进行跟踪,得到景区内的客流信息。通过对该模型在监控视频中的实验,验证了该模型在客流统计中满足实时性要求,具有较高的准确性。
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