Fast registration of articulated objects from depth images

Sourabh Prajapati, P J Narayanan
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引用次数: 1

Abstract

We present an approach for fast registration of a Global Articulated 3D Model to RGBD data from Kinect. Our approach uses geometry based matching of rigid parts of the articulated objects in depth images. The registration is performed in a parametric space of transformations independently for each segment. The time for registering each frame with the global model is reduced greatly using this method. We experimented the algorithm with different articulated object datasets and obtained significantly low execution time as compared to ICP algorithm when applied on each rigid part of the articulated object.
深度图像中铰接物体的快速配准
我们提出了一种从Kinect快速注册全局铰接3D模型到RGBD数据的方法。我们的方法使用基于几何的匹配深度图像中铰接物体的刚性部分。该配准是在一个独立的变换参数空间中进行的。该方法大大减少了每帧与全局模型的配准时间。我们在不同的铰接对象数据集上实验了该算法,当应用于铰接对象的每个刚性部分时,与ICP算法相比,该算法的执行时间明显较低。
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