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Spatial temporal graph convolutional networks for skeleton-based dynamic hand gesture recognition

机译:基于骨架动态手势识别的空间时间图卷积网络

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Abstract Hand gesture recognition methods play an important role in human-computer interaction. Among these methods are skeleton-based recognition techniques that seem to be promising. In literature, several methods have been proposed to recognize hand gestures with skeletons. One problem with these methods is that they consider little the connectivity between the joints of a skeleton, constructing simple graphs for skeleton connectivity. Observing this, we built a new model of hand skeletons by adding three types of edges in the graph to finely describe the linkage action of joints. Then, an end-to-end deep neural network, hand gesture graph convolutional network, is presented in which the convolution is conducted only on linked skeleton joints. Since the training dataset is relatively small, this work proposes expanding the coordinate dimensionality so as to let models learn more semantic features. Furthermore, relative coordinates are employed to help hand gesture graph convolutional network learn the feature representation independent of the random starting positions of actions. The proposed method is validated on two challenging datasets, and the experimental results show that it outperforms the state-of-the-art methods. Furthermore, it is relatively lightweight in practice for hand skeleton-based gesture recognition.
机译:摘要手势识别方法在人机互动中发挥重要作用。这些方法中是基于骨架的识别技术,似乎有前途。在文献中,已经提出了几种方法来识别用骨架的手势。这些方法的一个问题是它们考虑骨骼的关节之间的连接,构建用于骨架连接的简单图形。观察这一点,我们通过在图中添加三种类型的边缘来精细描述关节的连锁作用来构建新的手骨架模型。然后,提出了一个端到端的深神经网络,手势图卷积网络,其中卷积仅在连接的骨架关节上进行。由于训练数据集相对较小,这项工作提出扩展坐标维度,以便让模型了解更多的语义功能。此外,采用相对坐标来帮助手势图卷积网络学习特征表示,独立于动作的随机起始位置。所提出的方法在两个具有挑战性的数据集上验证,实验结果表明它优于最先进的方法。此外,基于手骨架的手势识别的实践中是相对重量轻的。

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