1. 基于改进的深度卷积神经网络的人体动作识别方法.
- Author
-
陈胜娣, 魏 维, 何冰倩, 陈思宇, and 刘基缘
- Subjects
- *
OPTICAL flow , *HUMAN behavior , *ARTIFICIAL neural networks , *FEATURE extraction , *HUMAN activity recognition , *DEEP learning - Abstract
Aiming at the problem of complex feature extraction and low accuracy in human action recognition, this paper proposed a network structure combining batch normalization algorithm with GoogLeNet network model. Applying batch normalization idea in the field of image classification to action recognition field, it improved the algorithm by normalizing the network input training sample by mini-batch. For convolutional network, RGB image was the spatial input, and stacked optical flows was the temporal input. Then, it fused the spatio-temporal networks to get the final action recognition result. It trained and evaluated the architecture on the standard video actions benchmarks of UCF101 and HMDB51, which achieved the accuracy of 93. 50%and 68. 32%. The results show that the improved convolutional neural network has a significant improvement in improving the recognition rate and has obvious advantages in action recognition. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF