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Research on Gesture Recognition of Augmented Reality Maintenance Guiding System based on improved SVM

机译:基于改进支持向量机的增强现实维修指导系统的手势识别研究

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Interaction is one of the key techniques of augmented reality (AR) maintenance guiding system. Because of the complexity of the maintenance guiding system's image background and the high dimensionality of gesture characteristics, the whole process of gesture recognition can be divided into three stages which are gesture segmentation, gesture characteristic feature modeling and trick recognition, In segmentation stage, for solving the misrecognition of skin-like region, a segmentation algorithm combing background mode and skin color to preclude some skin-like regions is adopted. In gesture characteristic feature modeling of image attributes stage, plenty of characteristic features are analyzed and acquired, such as structure characteristics, Hu invariant moments features and Fourier descriptor, In trick recognition stage, a classifier based on Support Vector Machine (SVM) is introduced into the augmented reality maintenance guiding process. SVM is a novel learning method based on statistical learning theory, processing academic foundation and excellent learning ability, having a lot of issues in machine learning area and special advantages in dealing with small samples, non-linear pattern recognition at high dimension. The gesture recognition of augmented reality maintenance guiding system is realized by SVM after the granulation of all the characteristic features. The experimental results of the simulation of number gesture recognition and its application in augmented reality maintenance guiding system show that the real-time performance and robustness of gesture recognition of AR maintenance guiding system can be greatly enhanced by improved SVM.
机译:交互是增强现实(AR)维护指导系统的关键技术之一。由于维护指导系统图像背景的复杂性和手势特征的高维性,手势识别的整个过程可以分为手势分割,手势特征特征建模和characteristic俩识别三个阶段。针对类皮肤区域的误识别,采用背景模式和肤色相结合的分割算法,以排除某些类皮肤区域。在图像属性阶段的手势特征建模中,对结构特征,Hu不变矩特征和傅立叶描述符等特征特征进行了分析和获取,在特技识别阶段,引入了基于支持向量机(SVM)的分类器。增强现实维护指导流程。 SVM是一种基于统计学习理论,处理学术基础和出色学习能力的新颖学习方法,在机器学习领域存在很多问题,并且在处理小样本,高维非线性模式识别方面具有特殊优势。增强现实维护指导系统的手势识别是在对所有特征进行细化之后,由SVM实现的。数字手势识别仿真及其在增强现实维护指导系统中的应用的实验结果表明,改进的SVM可以大大增强AR维护指导系统的手势识别的实时性和鲁棒性。

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