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首页> 外文期刊>Journal of Circuits, Systems, and Computers >A Flexible High-Level Fusion for an Accurate Human Action Recognition System
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A Flexible High-Level Fusion for an Accurate Human Action Recognition System

机译:一种灵活的高级融合,可用于准确的人类动作识别系统

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Action recognition is a very effective method of computer vision areas. In the last few years, there has been a growing interest in Deep learning networks as the Long Short-Term Memory (LSTM) architectures due to their efficiency in long-term time sequence processing. In the light of these recent events in deep neural networks, there is now considerable concern about the development of an accurate action recognition approach with low complexity. This paper aims to introduce a method for learning depth activity videos based on the LSTM and the classification fusion. The first step consists in extracting compact depth video features. We start with the calculation of Depth Motion Maps (DMM) from each sequence. Then we encode and concatenate contour and texture DMM characteristics using the histogram-of-oriented-gradient and local-binary-patterns descriptors. The second step is the depth video classification based on the naive Bayes fusion approach. Training three classifiers, which are the collaborative representation classifier, the kernel-based extreme learning machine and the LSTM, is done separately to get classification scores. Finally, we fuse the classification score outputs of all classifiers with the naive Bayesian method to get a final predicted label. Our proposed method achieves a significant improvement in the recognition rate compared to previous work that has used Kinect v2 and UTD-MHAD human action datasets.
机译:行动识别是一种非常有效的计算机视觉地区方法。在过去的几年中,由于它们在长期时间序列处理中的效率,对深度学习网络的兴趣日益增长是长期的短期记忆(LSTM)架构。鉴于深度神经网络中的这些最近的事件,现在对具有低复杂性的准确动作识别方法的发展存在相当大的关注。本文旨在引入一种基于LSTM和分类融合学习深度活动视频的方法。第一步包括提取紧凑深度视频特征。我们从每个序列开始计算深度运动地图(DMM)。然后,我们使用定向直方图 - 梯度和本地二进制模式描述符进行编码和连接轮廓和纹理DMM特征。第二步是基于Naive Bayes Fusion方法的深度视频分类。培训三个分类器,这些分类器是协作表示分类器,基于内核的极限学习机和LSTM,分别完成以获得分类分数。最后,我们将所有分类器的分类分数输出与Naive Bayesian方法融合,以获得最终预测标签。与使用Kinect V2和UTD-MHAD人类行动数据集的上一项工作相比,我们所提出的方法实现了识别率的显着改进。

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