基于机器视觉的手势识别系统设计

Weiquan Chen, Jichao Yan, Shufen Huang, L.G. Tan
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引用次数: 0

摘要

本项目基于Window10+Python3.6环境,使用OpenCV、Sklearn、PyQt5等Python库构建了一个比较完整的手势识别和翻译系统,可以识别生活中各种静态手势信号,并通过图像处理将其翻译成中文或阿拉伯数字。由于支持向量机(SVM)训练量的限制,本设计仅用于识别手势动作1-10,并使用PyQt5设计界面,用于实时显示手势识别翻译结果。本文重点研究了计算机摄像机提取的1-10个手势特征的静止图像的去噪、轮廓提取、RGB色彩空间和YCrCb可行性比较、GUI页面设计、手势的傅立叶算子提取、SVM模型的训练以及系统的调试。该系统还可以集成在不同的开发板上,并可以嵌入到设备载体中,以满足多场景的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of gesture recognition system based on machine vision
The project is based on Window10+Python3.6 environment, and uses Python libraries such as OpenCV, Sklearn and PyQt5 to construct a relatively complete gesture recognition and translation system, which can recognize all kinds of static gesture signals in life, and translate them into Chinese or Arabic numerals through image processing.Due to the limitation of the training amount of Support Vector Machines (SVM), this design is only used to recognize gesture actions 1-10, and the interface is designed using PyQt5 for real-time display of the results of gesture recognition translation.The paper focuses on the noise elimination, contour extraction, RGB colorspace and YCrCb feasibility comparison of still images of 1-10 gesture features extracted by computer camera, GUI page design, Fourier operator extraction of gestures, training SVM model, and debugging of the system. The system is also able to be integrated on different development boards and can be embedded in device carriers to meet multi-scene adaptability.
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