• 复杂场景下的电梯乘客异常行为检测方法

    Abnormal behavior detection method of elevator passengers in complex scenes

    • 针对复杂场景下电梯乘客异常行为识别中现有方法对行为特征理解不足导致识别准确率较低的问题,提出了一种改进PPTSM模型(CMTSM)的识别方法。首先,针对ResNet50网络对行为特征捕捉不充分的问题,引入多尺度扩张注意力机制,使模型能够整合多尺度语义信息,有效捕获异常行为的特征信息。其次,为增强人体姿态行为的特征信息,提出垂直深度点卷积融合模块,该模块整合了高级语义特征和低级细节特征,使网络能够提取更全面的特征。最后,在自定义的4种异常行为(扒门、跳跃、踢打和跌倒)的数据集以及公开数据集(UCF24、UCF101、HMDB51和Something-Something-v1)上进行了实验。实验结果表明:相较于原PPTSM模型,所提模型在准确率、召回率、精确率以及F1-score等评价指标上均有显著提升,能够满足复杂场景下电梯乘客异常行为检测的实际需求。

       

      Abstract: To address the issue that the existing methods for recognizing abnormal behaviors of elevator passengers in complex scenarios have insufficient understanding of behavioral characteristics, resulting in low recognition accuracy, an improved PPTSM model (CMTSM) recognition method is proposed. Firstly, to address the problem that the ResNet50 network fails to capture behavioral characteristics adequately, a multi-scale dilated attention mechanism is introduced, enabling the model to integrate multi-scale semantic information and effectively capture the feature information of abnormal behaviors. Secondly, to enhance the feature information of human posture behaviors, a vertical depth point convolution fusion module is proposed. This module integrates high-level semantic features and low-level detail features, allowing the network to extract more comprehensive features. Finally, experiments are conducted on a custom dataset of four abnormal behaviors (door-pulling, jumping, kicking, and falling) and public datasets (UCF24, UCF101, HMDB51, and Something-Something-v1). The experimental results show that compared with the original PPTSM model, the proposed model has significant improvements in evaluation metrics such as accuracy, recall rate, precision, and F1-score, and can meet the actual requirements for detecting abnormal behaviors of elevator passengers in complex scenarios.

       

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