Discriminative hand localization in depth images

Max Ehrlich, Philippos Mordohai
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Abstract

We present a novel hand localization technique for 3D user interfaces. Our method is designed to overcome the difficulty of fitting anatomical models which fail to converge or converge with large errors in complex scenes or suboptimal imagery. We learn a discriminative model of the hand from depth images by using fast to compute features and a Random Forest classifier. The learned model is then combined with a spatial clustering algorithm to localize the hand position. We propose three formulations of low-level image features for use in model training. We evaluate the performance of our method by testing on low resolution depth maps of users two to three meters from the sensor in natural poses. Our method can detect an arbitrary number of hands per scene and preliminary results show that it is robust to suboptimal imagery.
深度图像的判别手定位
提出了一种新的三维用户界面手部定位技术。我们的方法旨在克服在复杂场景或次优图像中解剖模型不收敛或收敛误差大的拟合困难。我们使用快速特征计算和随机森林分类器从深度图像中学习手的判别模型。然后将学习到的模型与空间聚类算法相结合来定位手的位置。我们提出了三种低级图像特征的公式,用于模型训练。我们通过在距离传感器2到3米的用户以自然姿势进行低分辨率深度图测试来评估我们的方法的性能。我们的方法可以在每个场景中检测任意数量的手,初步结果表明它对次优图像具有鲁棒性。
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