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首页> 外文期刊>Multimedia Tools and Applications >Combining ConvNets with hand-crafted features for action recognition based on an HMM-SVM classifier
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Combining ConvNets with hand-crafted features for action recognition based on an HMM-SVM classifier

机译:基于HMM-SVM分类器将ConvNets与手工制作的功能相结合以进行动作识别

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摘要

This paper proposes a new framework for RGB-D-based action recognition that takes advantages of hand-designed features from skeleton data and deeply learned features from depth maps, and exploits effectively both the local and global temporal information. Specifically, depth and skeleton data are firstly augmented for deep learning and making the recognition insensitive to view variance. Secondly, depth sequences are segmented using the handcrafted features based on skeleton joints motion histogram to exploit the local temporal information. All training segments are clustered using an Infinite Gaussian Mixture Model (IGMM) through Bayesian estimation and labelled for training Convolutional Neural Networks (ConvNets) on the depth maps. Thus, a depth sequence can be reliably encoded into a sequence of segment labels. Finally, the sequence of labels is fed into a joint Hidden Markov Model and Support Vector Machine (HMM-SVM) classifier to explore the global temporal information for final recognition. The proposed framework was evaluated on the widely used MSRAction-Pairs, MSRDailyActivity3D and UTD-MHAD datasets and achieved promising results.
机译:本文提出了一种基于RGB-D的动作识别的新框架,该框架利用了从骨架数据中手工设计的特征以及从深度图中深度学习的特征的优势,并有效地利用了本地和全局时间信息。具体来说,首先会增加深度和骨架数据,以进行深度学习,并使识别对视图变化不敏感。其次,基于骨骼关节运动直方图,使用手工特征对深度序列进行分段,以利用局部时间信息。通过贝叶斯估计,使用无限高斯混合模型(IGMM)对所有训练段进行聚类,并在深度图上标记训练卷积神经网络(ConvNets)。因此,深度序列可以被可靠地编码为片段标签的序列。最后,将标签序列输入到联合隐马尔可夫模型和支持向量机(HMM-SVM)分类器中,以探索全局时间信息以进行最终识别。在广泛使用的MSRAction-Pairs,MSRDailyActivity3D和UTD-MHAD数据集上对提出的框架进行了评估,并取得了可喜的结果。

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