Survey of Local Feature Extraction on Range Images
GUO Yu-Lan1,2, LU Min1, TAN Zhi-Guo1, WAN Jian-Wei1
1.College of Electronic Science and Engineering,National University of Defense Technology,Changsha 410073 2.School of Computer Science and Software Engineering,The University of Western Australia,Perth 6009
Abstract:Three dimensional (3D) object recognition is a hot research topic in computer vision. Local feature extraction is a key stage for 3D object recognition with the presence of occlusion and clutter. Firstly, range images and their representations are described. The differential geometric attributes are introduced, including the surface normal, the curvature and the shape index. Then, the local feature detection methods are classified into fixed scale method and adaptive scale method. And the local feature description methods are classified into depth value based, point spatial distribution based and geometric attributes distribution based methods. These methods with their merits and demerits are described. Finally, the existing methods are summarized and several challenges and future research directions are pointed out.
郭裕兰,鲁敏,谭志国,万建伟. 距离图像局部特征提取方法综述[J]. 模式识别与人工智能, 2012, 25(5): 783-791.
GUO Yu-Lan, LU Min, TAN Zhi-Guo, WAN Jian-Wei. Survey of Local Feature Extraction on Range Images. , 2012, 25(5): 783-791.
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