{"title":"UDS-SLAM:基于动态场景语义分割的实时鲁棒视觉 SLAM","authors":"Jun Liu, Junyuan Dong, Mingming Hu, Xu Lu","doi":"10.1108/ir-08-2023-0190","DOIUrl":null,"url":null,"abstract":"<h3>Purpose</h3>\n<p>Existing Simultaneous Localization and Mapping (SLAM) algorithms have been relatively well developed. However, when in complex dynamic environments, the movement of the dynamic points on the dynamic objects in the image in the mapping can have an impact on the observation of the system, and thus there will be biases and errors in the position estimation and the creation of map points. 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引用次数: 0
摘要
目的现有的同步定位和绘图(SLAM)算法已经发展得相对完善。然而,当处于复杂的动态环境中时,映射中图像中动态物体上的动态点的移动会对系统的观测产生影响,因此在位置估计和地图点的创建中会出现偏差和误差。本文旨在通过语义方法实现 SLAM 算法与传统方法相比更高的精度。设计/方法/途径本文基于 U-Net 语义分割网络实现动态物体的语义分割,然后通过运动检测方法进行运动一致性检测,判断分割后的物体在当前场景中是否运动,并结合运动补偿方法消除动态点,对当前局部图像进行补偿,从而使系统具有鲁棒性。研究结果在慕尼黑工业大学的动态数据集上进行了实验,比较了检测动态点和剔除异常值的效果,结果表明本文方法的绝对轨迹精度与 ORB-SLAM3 和 DS-SLAM 相比有显著提高。
UDS-SLAM: real-time robust visual SLAM based on semantic segmentation in dynamic scenes
Purpose
Existing Simultaneous Localization and Mapping (SLAM) algorithms have been relatively well developed. However, when in complex dynamic environments, the movement of the dynamic points on the dynamic objects in the image in the mapping can have an impact on the observation of the system, and thus there will be biases and errors in the position estimation and the creation of map points. The aim of this paper is to achieve more accurate accuracy in SLAM algorithms compared to traditional methods through semantic approaches.
Design/methodology/approach
In this paper, the semantic segmentation of dynamic objects is realized based on U-Net semantic segmentation network, followed by motion consistency detection through motion detection method to determine whether the segmented objects are moving in the current scene or not, and combined with the motion compensation method to eliminate dynamic points and compensate for the current local image, so as to make the system robust.
Findings
Experiments comparing the effect of detecting dynamic points and removing outliers are conducted on a dynamic data set of Technische Universität München, and the results show that the absolute trajectory accuracy of this paper's method is significantly improved compared with ORB-SLAM3 and DS-SLAM.
Originality/value
In this paper, in the semantic segmentation network part, the segmentation mask is combined with the method of dynamic point detection, elimination and compensation, which reduces the influence of dynamic objects, thus effectively improving the accuracy of localization in dynamic environments.