基于可见表面提取的遮挡三维物体姿态优化

Xunwei Tong, Ruifeng Li, Lianzheng Ge, Lijun Zhao, Ke Wang
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引用次数: 1

摘要

本文提出了一种基于三维物体可见表面提取的姿态精细方法。在对目标姿态进行粗略估计的情况下,通常采用迭代封闭点(ICP)算法,通过将目标模型与测试场景对齐来改进姿态。为了避免不可见点对ICP过程的干扰,我们只使用可见表面进行姿态细化。当场景中出现遮挡时,这是特别必要的。结合图像绘制技术和深度一致性验证技术,可以有效提取可见表面。在姿态优化过程中,还采用假设验证方法,尽早消除不合理的假设姿态。所提出的方法在公共Tejani数据集上进行了评估。实验结果表明,我们的方法将平均f1分数提高了0.2062,证明了我们的方法即使在被遮挡的场景中也能获得高精度的姿态估计结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose Refinement of Occluded 3D Objects Based on Visible Surface Extraction
In this paper, we propose a pose refinement method based on the visible surface extraction of 3D object. Given a rough estimation of object pose, the algorithm of iterative closet point (ICP) is often used to refine the pose by aligning the object model with test scene. To avoid the interference of invisible points on the ICP process, we only use the visible surface for pose refinement. It is especially necessary when occlusion occurs in the scene. Combining the technologies of image rendering and depth consistency verification, the visible surface can be effectively extracted. During the process of pose refinement, hypothesis verification methods are also used to eliminate unreasonable hypothetical poses as early as possible. The proposed method is evaluated on the public Tejani dataset. The experimental results show that our method improved the average F1-score by 0.2062, which proves that our method can obtain pose estimation results of high accuracy, even in the occluded scene.
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