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Spin Image Revisited: Fast Candidate Selection Using Outlier Forest Search

机译:重新审视自旋图像:使用离群值森林搜索快速选择候选对象

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摘要

Spin-images have been widely used for surface registration and object detection from range images in that they are scale, rotation, and pose invariant. The computational complexity, however, is linear to the number of spin images in the model data set because valid candidates are chosen according to the similarity distribution between the input spin image and whole spin images in the data set. In this paper we present a fast method for valid candidate selection as well as approximate estimate of the similarity distribution using outlier search in the partitioned vocabulary trees. The sampled spin images in each tree are used for approximate density estimation and best matched candidates are then collected in the trees according to the statistics of the density. In contrast to the previous approaches that attempt to build compact representations of the spin images, the proposed method reduces the search space using the hierarchical clusters of the spin images such that the computational complexity is drastically reduced from O(K • N) to O(K• log N). K and N are the size of the spin-image features and the model data sets respectively. As demonstrated in the experimental results with a consumer depth camera, the proposed method is tens of times faster than the conventional method while the registration accuracy is preserved.
机译:自旋图像已被广泛用于从范围图像进行表面配准和物体检测,因为它们具有比例,旋转和姿势不变性。但是,计算复杂度与模型数据集中的旋转图像数量呈线性关系,因为根据输入旋转图像和数据集中的整个旋转图像之间的相似度分布选择有效的候选者。在本文中,我们提出了一种用于有效候选者选择的快速方法,以及在分割的词汇树中使用异常值搜索的相似度分布的近似估计。每棵树中采样的自旋图像用于近似密度估计,然后根据密度统计信息在树中收集最佳匹配的候选图像。与尝试建立自旋图像的紧凑表示形式的先前方法相比,所提出的方法使用自旋图像的分层聚类来减少搜索空间,从而将计算复杂度从O(K•N)大大降低到O( K•log N)。 K和N分别是自旋图像特征和模型数据集的大小。如使用消费者深度相机的实验结果所证明的,所提出的方法比传统方法快数十倍,同时保持了套准精度。

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