基于改进YOLOv5的行人跌倒检测

Yaochang Xi, Peijiang Chen, Chaochao Miao
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引用次数: 0

摘要

利用YOLOv5s模型开发了一种端到端跌倒检测方法,可以准确定位人群并监测其跌倒行为。我们将SE注意机制添加到网络中的第二个和第四个CSP1_X结构中,使用特征提取来更精确地定位目标。设计空间金字塔池和全连通空间卷积(SPPFCSPC)结构代替SPP有效提取目标在不同尺度上的信息,提高其特征表达能力和检测精度。与之前的模型相比,yolov5s -2 -4 - c3se - sppfcspc模型的精度、平均精度(mAP)和召回率提高了3个百分点。分别为6.2和2.9%。秋季类别的mAP增加了7.3%。该模型的检测能力优于原有的YOLOv5s模型。
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Pedestrian Fall Detection Using Improved YOLOv5
An end-to-end fall detection method was developed using the YOLOv5s model to accurately locate a person and monitor their fall behavior in a crowd. We added the SE attention mechanism to the second and fourth CSP1_X structures in the network using feature extraction to locate a target more precisely. The spatial pyramid pooling and fully connected spatial convolution (SPPFCSPC) structure was designed to replace SPP to extract the information of the target in different scales effectively and enhance its feature expression ability and detection accuracy. Compared to the previous model, the precision, mean average precision (mAP), and recall rate of the YOLOv5s-2nd-4th-C3SE-SPPFCSPC model increased by 3., 6.2, and 2.9%, respectively. the mAP of the fall category increased by 7.3%. The developed model showed improved detection ability which surpassed that of the original YOLOv5s model.
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