使用词袋进行手势识别的机器学习

Marouane Benmoussa, A. Mahmoudi
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引用次数: 11

摘要

在过去的十年里,人机交互受到了极大的关注。最近的研究转向了更自然的交互系统,如手势人机界面。最近的工作是尝试使用机器学习方法来解决手势识别问题。他们中的一些人假装取得了非常高的成绩。然而,很少有人考虑到应用学习模型工作流的强制性要求,主要是数据不平衡、模型选择和泛化性能指标选择。在这项工作中,我们提出了一种机器学习方法,使用Kinect传感器实时识别用户手部的16种手势,并满足这些要求。只有当有移动的手势时才会触发识别。该方法基于对手部深度数据的支持向量机模型的训练,从中提取SIFT和SURF描述符的词包。数据保持平衡,模型核和参数选择采用交叉验证程序。使用ROC曲线下面积测量,该方法的总体性能达到98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for hand gesture recognition using bag-of-words
Human Computer Interaction received a great deal of attention this last decade. Last researches has turned to more natural interaction systems like gestural human machine interfaces. Recent works are attempting to solve the problem of hand gestures recognition using machine learning methods. Some of them are pretending to achieve very high performance. However, few of them are taking into account mandatory requirements to apply the workflow of a learning model, mainly data unbalance, model selection and generalization performance metric choice. In this work, we proposed a machine learning method for real time recognition of 16 gestures of user hands using the Kinect sensor that respects such requirements. The recognition is triggered only when there is a moving hand gesture. The method is based on the training of a Support Vector Machine model on hand depth data from which bag of words of SIFT and SURF descriptors are extracted. The data was kept balanced and the model kernel and parameters were selected using cross validation procedure. The method achieved 98% overall performance using the area under the ROC curve measure.
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