An Evaluation of Volumetric Interest Points

3D Imaging, Modeling, Processing, Visualization and Transmission(2011)

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摘要
This paper presents the first performance evaluation of interest points on scalar volumetric data. Such data encodes 3D shape, a fundamental property of objects. The use of another such property, texture (i.e. 2D surface colouration), or appearance, for object detection, recognition and registration has been well studied, 3D shape less so. However, the increasing prevalence of depth sensors and the diminishing returns to be had from appearance alone have seen a surge in shape-based methods. In this work we investigate the performance of several detectors of interest points in volumetric data, in terms of repeatability, number and nature of interest points. Such methods form the first step in many shape-based applications. Our detailed comparison, with both quantitative and qualitative measures on synthetic and real 3D data, both point-based and volumetric, aids readers in selecting a method suitable for their application.
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关键词
fundamental property,depth sensors,volumetric interest point,shape-based application,volumetric interest points,depth sensor,volumetric data,object registration,scalar volumetric data,data encode,aids reader,shape-based method,interest point,object detection,object recognition,performance evaluation,image registration,robustness,magnetic resonance imaging,magnetic resonance image,detectors,three dimensional,noise,shape,accuracy
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