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3D-Ferns+: Viewpoint-based keypoint classifier for robust 3D object pose detection

机译:3D-Ferns +:基于观点的关键点分类器,用于强大的3D对象姿态检测

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We present a novel pose detection method that can be used in mobile augmented reality (AR) services. Making 3D object pose detection robust against changes in viewpoint is a vitally important but quite difficult task because 3D objects often change their appearance significantly with changes in viewpoint, and the possible range of viewpoints is wide compared with planar targets. 3D-Ferns, which is a keypoint classifier for 3D object pose detection, performs direct 2D-3D matching and handles a wide range of detectable viewpoints, including all rotations. However, many difficult viewpoints still exist for pose detection because of the unevenness of matching performance over all viewpoints. In this paper, we propose a novel class selection strategy that evens out matching performance over all possible viewpoints and improves detection performance from difficult viewpoints by focusing on the per-viewpoint repeatability (PVR) of class 3D points. Experimental results demonstrate the impact of stability of 2D-3D matching on detection performance and the effect of our method, which reduces the detection failures in conventional approaches by over 23% for 3D targets that have various shapes and textures.
机译:我们提出了一种新颖的姿势检测方法,可以在移动增强现实(AR)服务中使用。使3D对象姿态检测对视点变化具有鲁棒性是至关重要的,但是却非常困难,因为3D对象通常会随着视点变化而显着改变其外观,并且与平面目标相比,视点的可能范围较广。 3D-Ferns是3D对象姿态检测的关键点分类器,执行直接2D-3D匹配并处理各种可检测的视点,包括所有旋转。然而,由于在所有视点上的匹配性能的不均匀性,用于姿势检测的许多困难的视点仍然存在。在本文中,我们提出了一种新颖的类别选择策略,该策略可以通过关注类别3D点的每个视点的可重复性(PVR)来在所有可能的视点上使匹配性能均匀,并从困难的视点中提高检测性能。实验结果证明了2D-3D匹配的稳定性对检测性能的影响以及我们方法的效果,对于具有各种形状和纹理的3D目标,传统方法中的检测失败率降低了23%以上。

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