三维二进制签名

Siddharth Srivastava, Brejesh Lall
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引用次数: 11

摘要

本文提出了一种新的三维点云二元描述符。该描述符被称为3D二进制签名(3DBS),其动机来自于二维图像的二进制描述符的匹配效率。3DBS用二进制向量描述点云中的关键点,从而实现极快的匹配。该方法使用标准关键点检测器中的关键点。该描述符是通过构造局部参考框架并相应地对齐局部表面补丁来构建的。局部表面斑块由基于它们之间的角度约束来识别最近的邻居组成。这些点是根据到关键点的距离排序的。将这些关键点的有序对的法线投影到坐标轴上,并使用相对大小来分配二进制数字。这样构成的向量用作表示关键点的签名。采用汉明距离进行匹配。我们展示了3DBS在各种评估指标上优于最先进的描述符。
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3D binary signatures
In this paper, we propose a novel binary descriptor for 3D point clouds. The proposed descriptor termed as 3D Binary Signature (3DBS) is motivated from the matching efficiency of the binary descriptors for 2D images. 3DBS describes keypoints from point clouds with a binary vector resulting in extremely fast matching. The method uses keypoints from standard keypoint detectors. The descriptor is built by constructing a Local Reference Frame and aligning a local surface patch accordingly. The local surface patch constitutes of identifying nearest neighbours based upon an angular constraint among them. The points are ordered with respect to the distance from the keypoints. The normals of the ordered pairs of these keypoints are projected on the axes and the relative magnitude is used to assign a binary digit. The vector thus constituted is used as a signature for representing the keypoints. The matching is done by using hamming distance. We show that 3DBS outperforms state of the art descriptors on various evaluation metrics.
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