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Spatiotemporal 2D Skeleton-based Image for Dynamic Gesture Recognition Using Convolutional Neural Networks

机译:用于使用卷积神经网络的动态手势识别的时空2D骨架图像

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This paper presents a dynamic gesture recognition approach using a novel spatiotemporal 2D skeleton image representation that can be fed to computationally efficient deep convolutional neural networks, for applications on human-robot interaction. Gestures are a seamless modality of human interaction and represent a potentially natural way to interact with the smart devices around us, like robots. The contribution of this paper is the proposal of a visually interpretable representation of dynamic gestures, which has a two-fold advantage: (i) conveys both spatial and temporal characteristics relying on a technique inspired in computer graphics, (ii) and can be used with simple and efficient architectures of convolutional neural networks. In our representation, a 3D skeleton model is projected to a 2D camera’s point-of-view, preserving spatial relations, and through a sliding window the temporal domain is encoded in a fused image of consecutive frames, through a shading motion effect achieved by manipulating a transparency coefficient. The result is a 2D image that when fed to simple custom-designed convolutional neural networks, it is achieved accurate classification of dynamic gestures. Experimmental reuslts obtained with a purposely captured 6 gesture dataset of 11 subjects, and also 2 public datasets, give evidence of a strong performance of our approach, when compared to other methods.
机译:本文呈现了一种动态手势识别方法,使用新的时空2D骨架图像表示,可以馈送到计算上有效的深度卷积神经网络,用于对人机交互的应用。手势是人类互动的无缝模式,代表了与我们周围的智能设备互动的潜在自然方式,如机器人。本文的贡献是对动态手势的视觉可解释表示的提议,其具有两倍的优势:(i)传达依赖于在计算机图形学(ii)中启发的技术的空间和时间特征,并且可以使用随着卷积神经网络的简单高效架构。在我们的代表中,将3D骨架模型投射到2D摄像机的视图,保留空间关系,并且通过滑动窗口通过通过操纵实现的阴影运动效果,在连续帧的融合图像中编码时域。透明度系数。结果是一个2D图像,当馈送到简单的定制设计的卷积神经网络时,实现了动态手势的准确分类。通过目的捕获的6个主题的6个手势数据集,以及2个公共数据集的验证瑞士州,另外,与其他方法相比,提供了对我们方法的强烈表现的证据。

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