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Depth data and fusion of feature descriptors for static gesture recognition

机译:静态手势识别的特征描述符的深度数据和融合

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摘要

In this study, the authors propose a novel methodology for static gesture recognition in a complex background using only depth map from Microsoft's Kinect camera. Four different types of features are extracted and analysed on two public static gesture datasets. The features extracted from the segmented hand are geometrical, local binary patterns, number of fingers (Num) raised in a gesture and distance of hand palm centre from the fingertips and the valley between the fingers. The hand region is first segmented from the image using depth data followed by the forearm removal. Four multi-class support vector machine (SVM) kernels are also compared and used for recognition of gestures with extracted feature vector as an input. The experimental results achieved recognition accuracy of 99 and $95.7%$95.7% on two public complex static gesture datasets using Gaussian SVM kernel function as a classifier. The proposed approach is found to be comparable and even outperforms some of the state-of-the-art techniques in terms of high recognition accuracies, even after using a single cue for hand segmentation and extraction of features in the complex background which results in non-dependency on too many cues and much hardware.
机译:在这项研究中,作者提出了一种新颖的,在复杂的背景中使用Microsoft的Kinect相机的深度映射提出了一种在复杂的背景中的静态手势识别方法。在两个公共静态手势数据集中提取并分析了四种不同类型的功能。从分段的手中提取的特征是几何,局部二进制图案,从指尖和手指之间的手掌中心的手势和距离延伸的手指(num)。使用深度数据,从图像中逐个逐步逐步分割手区域。还比较四种多级支持向量机(SVM)内核,并用于识别提取的特征向量作为输入的手势。使用高斯SVM内核函数作为分类器,实验结果在两个公共复杂静态手势数据集中实现了99和95.7%的识别准确性为95.7%。发现所提出的方法是可比的甚至优于一些最先进的技术,即使在使用单个提示用于手部分割和提取复杂背景中的特征后,也能够提取一些最先进的技术。导致非 - 依赖于太多线索和很多硬件。

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