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Comparison of SIFT and SURF Methods for Use on Hand Gesture Recognition Based on Depth Map

机译:基于深度映射的手势识别使用的筛选和冲浪方法的比较

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In this paper a comparison between two popular feature extraction methods is presented. Scale-invariant feature transform (or SIFT) is the first method. The Speeded up robust features (or SURF) is presented as second. These two methods are tested on set of depth maps. Ten defined gestures of left hand are in these depth maps. The Microsoft Kinect camera is used for capturing the images [1]. The Support vector machine (or SVM) is used as classification method. The results are accuracy of SVM prediction on selected images.
机译:本文提出了两个流行的特征提取方法之间的比较。 Scale-Invariant功能转换(或SIFT)是第一个方法。加速的鲁棒特征(或冲浪)被呈现为秒。这两种方法在一组深度图上进行了测试。左手的十个定义手势在这些深度图中。 Microsoft Kinect相机用于捕获图像[1]。支持向量机(或SVM)用作分类方法。结果是所选图像上SVM预测的精度。

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