基于行人再识别算法的公交客流OD矩阵获取方法

Xiaolei Liu, Li Guo, Weizhong Zhang, Wenshan Wang
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引用次数: 0

摘要

在公共交通中,每位乘客出发点和终点的OD (origin-destination)矩阵对公交调度和网络优化具有重要意义。难点在于实时匹配从后门下车的乘客和从前门上车的乘客。这里使用的主要技术是重新识别。目前的再识别方法主要应用于行人再识别、车辆填充判别等安全领域,虽然准确率较高,但实时性较差。本文对经典方法FastReID进行改进,利用GCNet改变其注意模块以提高精度,在BNNeck结构中增加一个全连接层,在计算相同乘客属性之间的距离时对行人的其他基本属性进行分类;在损失函数中,根据属性之间的距离施加约束,以减少类内距离。最后,将乘客特征按属性分类存储,提高最终检索效率。实验表明,与FastReID相比,该方法每100次检索的准确率提高了3.2%,检测速度提高了14.73% (69.58ms)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Method of Obtaining OD Matrix for Bus Passenger Flow Based on Pedestrian Re-identification Algorithm
In public transport, the OD (origin-destination) matrix of each passenger's starting and ending points is of great importance for bus scheduling and network optimization. The difficulty is matching passengers getting off at the back door with those getting on at the front door in real-time. The leading technology used here is re-identification. The current re-identification method is mainly used in the security field of pedestrian re-identification, vehicle filling discrimination, and although the accuracy is high, the real-time performance is poor. In this paper, the classical method FastReID is improved by changing its attention module using GCNet to improve accuracy and by adding a fully connected layer to the BNNeck structure to classify other essential attributes of pedestrians while calculating the distance between the same passenger attributes; in the loss function, constraints are applied according to the distance between this attributes to reduce the intra-class distance. Finally, passenger features are stored in categories by attributes to improve the final retrieval efficiency. Experiments show that the method in this paper improves accuracy by 3.2 % and detection speed by 14.73% (69.58ms) per 100 retrievals compared to FastReID.
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