基于鲁棒时空特征和卷积神经网络的人类活动识别

Md. Zia Uddin, W. Khaksar, J. Tørresen
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引用次数: 8

摘要

在这项工作中,我们提出了一种新的基于卷积神经网络的鲁棒时空特征的深度视频人类活动识别方法。从活动的深度图像中,基于随机森林上的随机特征对人体部位进行分割。从活动视频的深度图像中分割的身体部位中提取出三维身体关节对的角度、身体各部位深度信息的均值和方差等空间特征。然后在视频的下一个图像中用关节的大小和方向等运动特征增强空间特征。最后,将时空特征应用到卷积神经网络中进行活动训练和识别。基于深度学习的活动识别方法优于其他传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity recognition using robust spatiotemporal features and convolutional neural network
In this work, we propose a novel human activity recognition method from depth videos using robust spatiotemporal features with convolutional neural network. From the depth images of activities, human body parts are segmented based on random features on a random forest. From the segmented body parts in a depth image of an activity video, spatial features are extracted such as angles of the 3-D body joint pairs, means and variances of the depth information in each part of the body. The spatial features are then augmented with the motion features such as magnitude and direction of joints in next image of the video. Finally, the spatiotemporal features are applied to a convolutional neural network for activity training and recognition. The deep learning-based activity recognition method outperforms other traditional methods.
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