基于三维卷积神经网络的学习行为识别与分析

Rui Zhang, B. Ni
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引用次数: 4

摘要

由于人类行为的多样性、场景噪声、摄像机视角等特点,增加了识别人类行为的难度。如今,学习效率低或精神压力过大等问题越来越多。在很大程度上,这些问题是由于工作和休息分配不合理造成的。因此,本文提出了一种基于三维卷积神经网络(CNN)结构的学习行为识别方法。这涉及到将几个连续的视频帧作为一组,通过有效的训练,经过卷积和池化操作提取特征中的动作信息。最后通过全连接层和分类器得到识别分类结果。实验结果表明,该方法准确、快速。以KTH数据集为例,对不同参数下提高测试准确率的方法进行了比较和讨论,为学习行为数据集识别提供理论依据。
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Learning Behavior Recognition and Analysis by Using 3D Convolutional Neural Networks
Due to the diversity of human behavior, scene noise, camera view angle and other characteristics, the difficulty of recognizing human behavior has increased. Nowadays, there are more and more problems, such as low learning efficiency or excessive mental pressure. To a large extent, these problems are caused by an unreasonable distribution of work and rest. Therefore, this paper proposes a learning behavior recognition method based on the structure of 3D convolutional neural networks (CNN). This involves taking several continuous frames of video as a group, through effective training, after the convolution and pooling operation to extract the action information in the features. Finally, the recognition and classification results are obtained through the full connection layer and the classifier. The experimental results show that this method is accurate and fast. Taking the KTH dataset as an example, the methods of improving test accuracy under different parameters were compared and discussed, which provided a theoretical basis for learning behavior dataset recognition.
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