OPSNet: Point Cloud Registration Based on Overlapping Predictive Segmentation

IF 4.6 Q1 OPTICS
Jiuxin Hu, Zhihao Pan, Zhiyong Li, Jin Tang
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引用次数: 0

Abstract

Abstract Registration is a critical task in the field of point clouds, aiming to align data acquired at different times or from different viewpoints for accurate matching. Deep learning methods have made important progress in point cloud registration tasks. However, most existing approaches do not handle the non-overlapping parts of point clouds, resulting in poor performance in low-overlap and noisy scenarios. We propose a registration model called OPSNet, which achieves optimal alignment transformation estimation and overlapping region prediction through an iterative process. OPSNet consists of modules including global feature extraction, overlapping region prediction segmentation, and alignment registration. By utilizing a segmentation algorithm to deal with the non-overlapping parts of data, OPSNet reduces the adverse effects caused by non-overlapping regions in point cloud registration. The model learns feature representations and performs iterative optimization to achieve precise point cloud alignment. We conduct comprehensive experiments on common point cloud registration datasets and compare OPSNet with several classical point cloud registration methods. The experimental results display that OPSNet achieves outstanding performance in terms of rotation and translation errors, outperforming other methods. Additionally, we evaluate the registration performance under different overlap ratios and find that OPSNet can achieve better registration results even in low-overlap scenarios.
OPSNet:基于重叠预测分割的点云配准
摘要配准是点云领域的一项关键任务,其目的是对不同时间或不同视点采集的数据进行对齐,以实现精确匹配。深度学习方法在点云配准任务方面取得了重要进展。然而,现有的大多数方法都没有处理点云的非重叠部分,导致在低重叠和噪声场景下性能不佳。提出了一种OPSNet配准模型,通过迭代过程实现最优对准变换估计和重叠区域预测。OPSNet由全局特征提取、重叠区域预测分割、对齐配准等模块组成。OPSNet通过使用分割算法处理数据的非重叠部分,减少了点云配准中非重叠区域带来的不利影响。该模型学习特征表示并进行迭代优化,以实现精确的点云对齐。我们在常见的点云配准数据集上进行了全面的实验,并将OPSNet与几种经典的点云配准方法进行了比较。实验结果表明,OPSNet在旋转和平移误差方面取得了优异的成绩,优于其他方法。此外,我们评估了不同重叠率下的配准性能,发现即使在低重叠情况下,OPSNet也能取得更好的配准效果。
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来源期刊
CiteScore
10.70
自引率
0.00%
发文量
27
审稿时长
12 weeks
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