Static Hand Gesture Recognition Based on HOG with Kinect

Hui Li, Lei Yang, Xiaoyu Wu, Shengmiao Xu, Youwen Wang
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引用次数: 24

Abstract

In this paper, we propose and implement a novel method for recognition static hand gestures using depth data from Kinect sensor of Microsoft. Compared to the entire human body, the hand is a smaller object with more complex articulations and more easily affected by segmentation errors. So it is a very challenging problem to recognize hand gestures. Our approach involves choosing HOG feature with both geometric moment invariant features and adapted to the light transform by analyzing the features of hands characteristics. Through the rapid cascade Adaboost training algorithm obtains the training models of gestures and matches them, thus build the accuracy and efficiency hand gesture recognition system using the Kinect sensor.
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基于Kinect的HOG静态手势识别
本文提出并实现了一种基于Kinect传感器深度数据的静态手势识别新方法。与整个人体相比,手是一个更小的物体,更复杂的关节,更容易受到分割错误的影响。所以识别手势是一个非常具有挑战性的问题。该方法通过分析手的特征,选择具有几何矩不变特征和适应光变换特征的HOG特征。通过快速级联Adaboost训练算法获得手势训练模型并进行匹配,从而构建使用Kinect传感器的准确高效的手势识别系统。
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