MultiWave-Net: An Optimized Spatiotemporal Network for Abnormal Action Recognition Using Wavelet-Based Channel Augmentation

AI Pub Date : 2024-01-24 DOI:10.3390/ai5010014
Ramez M. Elmasry, Mohamed A. Abd El Ghany, Mohammed Abdel-Megeed Salem, Omar M. Fahmy
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Abstract

Human behavior is regarded as one of the most complex notions present nowadays, due to the large magnitude of possibilities. These behaviors and actions can be distinguished as normal and abnormal. However, abnormal behavior is a vast spectrum, so in this work, abnormal behavior is regarded as human aggression or in another context when car accidents occur on the road. As this behavior can negatively affect the surrounding traffic participants, such as vehicles and other pedestrians, it is crucial to monitor such behavior. Given the current prevalent spread of cameras everywhere with different types, they can be used to classify and monitor such behavior. Accordingly, this work proposes a new optimized model based on a novel integrated wavelet-based channel augmentation unit for classifying human behavior in various scenes, having a total number of trainable parameters of 5.3 m with an average inference time of 0.09 s. The model has been trained and evaluated on four public datasets: Real Live Violence Situations (RLVS), Highway Incident Detection (HWID), Movie Fights, and Hockey Fights. The proposed technique achieved accuracies in the range of 92% to 99.5% across the used benchmark datasets. Comprehensive analysis and comparisons between different versions of the model and the state-of-the-art have been performed to confirm the model’s performance in terms of accuracy and efficiency. The proposed model has higher accuracy with an average of 4.97%, and higher efficiency by reducing the number of parameters by around 139.1 m compared to other models trained and tested on the same benchmark datasets.
多波网络:利用基于小波的信道增强技术识别异常动作的优化时空网络
人类行为因其巨大的可能性而被视为当今最复杂的概念之一。这些行为和行动可分为正常和异常两种。然而,异常行为的范围很广,因此在这项工作中,异常行为被视为人类的攻击行为,或者在道路上发生车祸时的另一种情况。由于这种行为会对周围的交通参与者(如车辆和其他行人)造成负面影响,因此对这种行为进行监控至关重要。鉴于目前不同类型的摄像头随处可见,它们可用于对此类行为进行分类和监控。因此,本研究提出了一种基于新型集成小波信道增强单元的优化模型,用于对各种场景中的人类行为进行分类,该模型的可训练参数总数为 5.3 m,平均推理时间为 0.09 s:这些数据集包括:真实暴力场景(RLVS)、高速公路事件检测(HWID)、电影打斗和曲棍球打斗。在所使用的基准数据集上,所提出的技术达到了 92% 到 99.5% 的准确率。为了确认模型在准确性和效率方面的性能,我们对模型的不同版本与最先进的模型进行了综合分析和比较。与在相同基准数据集上训练和测试的其他模型相比,所提出的模型具有更高的准确率(平均为 4.97%)和更高的效率,减少了约 139.1 米的参数数量。
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