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Gesture Recognition Based on Depth Information and Convolutional Neural Network

机译:基于深度信息和卷积神经网络的姿态识别

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Vision-based gesture recognition accords with natural communication habits of human and can carry out long-distance and non-contact interactions. So it has become a hot direction in human-computer interaction research whose recognition effect largely depends on the performance of image preprocessing and recognition algorithms. In this paper, a gesture recognition method using color image and depth image combined is designed. For the influence of the angle on the same gesture, the skeleton algorithm is optimized based on the layer-by-layer stripping concept. The fast refinement algorithm improves the process of repeated scanning, extracts the key node information in the skeleton map of the hand, and establishes the spatial axis of the hand to determine the gesture direction. The gesture recognition experiment was performed based on convolutional neural network. The results showed the recognition accuracy rate was 96.01%, and the robustness and accuracy of the proposed recognition method were verified.
机译:基于视觉的手势识别符合人类的自然沟通习惯,可以进行长距离和非接触相互作用。因此,它已成为人机交互研究中的热点,其识别效应在很大程度上取决于图像预处理和识别算法的性能。本文设计了一种使用彩色图像和深度图像组合的手势识别方法。对于角度在相同手势上的影响,基于逐层剥离概念优化了骨架算法。快速改进算法改善了重复扫描的过程,提取手的骨架映射中的密钥节点信息,并建立手的空间轴以确定手势方向。基于卷积神经网络进行手势识别实验。结果表明,识别精度率为96.01%,验证了所提出的识别方法的鲁棒性和准确性。

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