MCFilter: feature filter based on motion-correlation for LiDAR SLAM

Han Sun, Song Tang, Xiaozhi Qi, Zhiyuan Ma, Jianxin Gao
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Abstract

Purpose This study aims to introduce a novel noise filter module designed for LiDAR simultaneous localization and mapping (SLAM) systems. The primary objective is to enhance pose estimation accuracy and improve the overall system performance in outdoor environments. Design/methodology/approach Distinct from traditional approaches, MCFilter emphasizes enhancing point cloud data quality at the pixel level. This framework hinges on two primary elements. First, the D-Tracker, a tracking algorithm, is grounded on multiresolution three-dimensional (3D) descriptors and adeptly maintains a balance between precision and efficiency. Second, the R-Filter introduces a pixel-level attribute named motion-correlation, which effectively identifies and removes dynamic points. Furthermore, designed as a modular component, MCFilter ensures seamless integration into existing LiDAR SLAM systems. Findings Based on rigorous testing with public data sets and real-world conditions, the MCFilter reported an increase in average accuracy of 12.39% and reduced processing time by 24.18%. These outcomes emphasize the method’s effectiveness in refining the performance of current LiDAR SLAM systems. Originality/value In this study, the authors present a novel 3D descriptor tracker designed for consistent feature point matching across successive frames. The authors also propose an innovative attribute to detect and eliminate noise points. Experimental results demonstrate that integrating this method into existing LiDAR SLAM systems yields state-of-the-art performance.
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MCFilter:基于运动相关性的特征滤波器,用于激光雷达 SLAM
目的介绍一种用于激光雷达同步定位与制图(SLAM)系统的噪声滤波模块。主要目标是提高姿态估计精度,改善室外环境下的整体系统性能。设计/方法/方法与传统方法不同,MCFilter强调在像素级提高点云数据质量。这个框架取决于两个主要因素。首先,D-Tracker是一种基于多分辨率三维(3D)描述符的跟踪算法,能够熟练地保持精度和效率之间的平衡。其次,R-Filter引入了一个像素级的运动相关性属性,有效地识别和去除动态点。此外,MCFilter作为模块化组件设计,可确保与现有LiDAR SLAM系统无缝集成。基于对公开数据集和真实世界条件的严格测试,MCFilter报告平均准确率提高12.39%,处理时间减少24.18%。这些结果强调了该方法在改进当前激光雷达SLAM系统性能方面的有效性。在这项研究中,作者提出了一种新的3D描述符跟踪器,旨在实现连续帧之间一致的特征点匹配。作者还提出了一种新的属性来检测和消除噪声点。实验结果表明,将该方法集成到现有的LiDAR SLAM系统中可以获得最先进的性能。
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