Research on Static Gesture Recognition Based on Deep Learning

Min Zhang, Pingping Liu
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Abstract

Abstract With the continuous development and progress of the times, the ways of human-computer interaction have become more and more diverse. In order to reduce the spread of the new crown virus, gesture recognition has become a hot topic in the field of human-computer interaction in recent years. Traditional gesture recognition is affected by the environment and database, etc., with poor robustness and low accuracy. In order to improve the recognition rate of static gestures, this paper proposes to establish a deep learning model using CNN convolutional neural network, and a static gesture recognition method based on template matching. By establishing a palm template diagram, the gesture image to be recognized is matched with the template diagram based on the feature point, and the image is rotated after matching, and the template based on the grayscale value is matched again, so as to extract the gesture part. Through experimental proof, the algorithm can effectively improve the gesture recognition rate, the recognition accuracy rate reached 93.17%, and the recognition speed is faster.
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基于深度学习的静态手势识别研究
随着时代的不断发展和进步,人机交互的方式也越来越多样化。为了减少新冠病毒的传播,手势识别成为近年来人机交互领域的热点。传统的手势识别受环境、数据库等因素的影响,鲁棒性差,准确率低。为了提高静态手势的识别率,本文提出了利用CNN卷积神经网络建立深度学习模型,以及基于模板匹配的静态手势识别方法。通过建立手掌模板图,将待识别的手势图像与基于特征点的模板图进行匹配,匹配后旋转图像,再次匹配基于灰度值的模板,提取手势部分。通过实验证明,该算法能有效提高手势识别率,识别准确率达到93.17%,识别速度更快。
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