抗噪音SLAM

Anirud Thyagharajan, O. J. Omer, D. Mandal, S. Subramoney
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引用次数: 2

摘要

稀疏-间接SLAM系统由于其计算效率和光度不变性而广受欢迎。深度传感器对于SLAM框架至关重要,可以为3D世界提供尺度信息,但众所周知,深度传感器受到各种噪声源的困扰,这些噪声源具有横向和轴向分量。在这项工作中,我们展示了这些深度噪声成分对最先进的稀疏-间接SLAM系统(ORB-SLAM2)性能的有害影响。我们提出(i)基于地图点共识的离群值抑制(MC-OR)来对抗横向噪声,以及(ii)自适应虚拟摄像机(AVC)来准确地对抗轴向噪声。MC-OR利用同一地标的多个目击之间的共识信息来消除噪声深度的歧义,并在姿态优化之前将其过滤掉。在AVC中,我们引入误差向量作为轴向深度误差的精确表示。此外,我们还提出了一种自适应算法来寻找虚拟摄像机位置,用于投影姿态优化目标函数中的误差。我们的技术同样适用于稀疏间接SLAM系统直接使用的立体图像对和RGB-D输入。我们的方法在TUM (RGB-D)和EuRoC(立体)数据集上进行了测试,结果表明它们比现有的最先进的ORB-SLAM2性能好2-3倍,特别是在受深度噪声严重影响的序列中。
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Towards Noise Resilient SLAM
Sparse-indirect SLAM systems have been dominantly popular due to their computational efficiency and photometric invariance properties. Depth sensors are critical to SLAM frameworks for providing scale information to the 3D world, yet known to be plagued by a wide variety of noise sources, possessing lateral and axial components. In this work, we demonstrate the detrimental impact of these depth noise components on the performance of the state-of-the-art sparse-indirect SLAM system (ORB-SLAM2). We propose (i) Map-Point Consensus based Outlier Rejection (MC-OR) to counter lateral noise, and (ii) Adaptive Virtual Camera (AVC) to combat axial noise accurately. MC-OR utilizes consensus information between multiple sightings of the same landmark to disambiguate noisy depth and filter it out before pose optimization. In AVC, we introduce an error vector as an accurate representation of the axial depth error. We additionally propose an adaptive algorithm to find the virtual camera location for projecting the error used in the objective function of the pose optimization. Our techniques work equally well for stereo image pairs and RGB-D input directly used by sparse-indirect SLAM systems. Our methods were tested on the TUM (RGB-D) and EuRoC (stereo) datasets and we show that they outperform existing state-of-the-art ORB-SLAM2 by 2-3x, especially in sequences critically affected by depth noise.
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