Abnormal Behavior Recognition Based on 3D Dense Connections.

International journal of neural systems Pub Date : 2024-09-01 Epub Date: 2024-06-25 DOI:10.1142/S0129065724500497
Wei Chen, Zhanhe Yu, Chaochao Yang, Yuanyao Lu
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Abstract

Abnormal behavior recognition is an important technology used to detect and identify activities or events that deviate from normal behavior patterns. It has wide applications in various fields such as network security, financial fraud detection, and video surveillance. In recent years, Deep Convolution Networks (ConvNets) have been widely applied in abnormal behavior recognition algorithms and have achieved significant results. However, existing abnormal behavior detection algorithms mainly focus on improving the accuracy of the algorithms and have not explored the real-time nature of abnormal behavior recognition. This is crucial to quickly identify abnormal behavior in public places and improve urban public safety. Therefore, this paper proposes an abnormal behavior recognition algorithm based on three-dimensional (3D) dense connections. The proposed algorithm uses a multi-instance learning strategy to classify various types of abnormal behaviors, and employs dense connection modules and soft-threshold attention mechanisms to reduce the model's parameter count and enhance network computational efficiency. Finally, redundant information in the sequence is reduced by attention allocation to mitigate its negative impact on recognition results. Experimental verification shows that our method achieves a recognition accuracy of 95.61% on the UCF-crime dataset. Comparative experiments demonstrate that our model has strong performance in terms of recognition accuracy and speed.

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基于三维密集连接的异常行为识别
异常行为识别是一项重要技术,用于检测和识别偏离正常行为模式的活动或事件。它在网络安全、金融欺诈检测和视频监控等多个领域有着广泛的应用。近年来,深度卷积网络(ConvNets)被广泛应用于异常行为识别算法中,并取得了显著效果。然而,现有的异常行为检测算法主要集中在提高算法的准确性上,并没有探索异常行为识别的实时性。这对于快速识别公共场所的异常行为,提高城市公共安全至关重要。因此,本文提出了一种基于三维(3D)密集连接的异常行为识别算法。该算法采用多实例学习策略对各种类型的异常行为进行分类,并采用密集连接模块和软阈值关注机制来减少模型的参数数量,提高网络计算效率。最后,通过注意力分配减少序列中的冗余信息,以减轻其对识别结果的负面影响。实验验证表明,我们的方法在 UCF 犯罪数据集上达到了 95.61% 的识别准确率。对比实验证明,我们的模型在识别准确率和识别速度方面都有很好的表现。
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