Real-time Human Activity Recognition Using ResNet and 3D Convolutional Neural Networks

N. Archana, K. Hareesh
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引用次数: 4

Abstract

In computer vision-based applications, the recognition of human activity is always a standard problem. Nowadays, activity recognition is more possible and accurate due to good development in artificial neural networks like convolutional neural network CNN. In many recent works, the recognition model architecture use CNN and long short-term memory units (LSTM) - attention models to extract spatial and temporal features from the input video. This particular work is related to real-time human activity recognition by Resnet and 3D CNN without the involvement of the LSTM- attention model. Here the 2D Resnet is modified to 3D CNN to achieve better human activity recognition accuracy. The wide range of data information from the kinetics dataset can avoid overfitting issues during the training period. And the combination of Resnet and 3D CNN can enhance the accuracy of recognition. As a consequence, a method for detecting, monitoring, and recognizing real-time human motion has been developed.
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利用ResNet和三维卷积神经网络进行实时人体活动识别
在基于计算机视觉的应用中,人类活动的识别一直是一个标准问题。如今,由于卷积神经网络CNN等人工神经网络的良好发展,使得活动识别更加可能和准确。在最近的许多工作中,识别模型架构使用CNN和长短期记忆单元(LSTM) -注意力模型从输入视频中提取时空特征。这项特殊的工作与Resnet和3D CNN的实时人类活动识别有关,而不涉及LSTM-注意力模型。这里将2D Resnet修改为3D CNN,以获得更好的人体活动识别精度。来自动力学数据集的广泛数据信息可以避免训练期间的过拟合问题。将Resnet与3D CNN相结合,可以提高识别的准确率。因此,一种检测、监测和识别实时人体运动的方法已经被开发出来。
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