Dan Feng, Zhenyu Yin, Xiaohui Wang, Feiqing Zhang, Zisong Wang
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引用次数: 0
摘要
目的传统的视觉同步定位与映射(SLAM)系统主要基于环境是静态的假设,这使得它们在复杂的工业生产环境中很难应对动态物体造成的干扰。本文旨在通过语义分割及其优化,提高复杂动态环境中视觉 SLAM 的稳定性。设计/方法/途径 本文提出了一种基于 YOLOv5s 语义分割的复杂动态环境实时视觉 SLAM 系统,命名为 YLS-SLAM。该系统结合了语义分割结果和边界语义增强算法。研究结果在慕尼黑工业大学和波恩数据集上的实验表明,在单目和红绿蓝-深度模式下,YLS-SLAM 的定位精度明显优于现有的先进动态 SLAM 方法,有效提高了视觉 SLAM 的鲁棒性。此外,作者还在实际工业生产环境中使用单目相机进行了测试,成功验证了其在复杂动态环境中的有效性和应用潜力。 原创性/价值 本文将语义分割算法与边界语义增强算法相结合,有效实现了动态物体及其边缘的精确去除,同时保证了系统的实时性,具有重要的应用价值。
YLS-SLAM: a real-time dynamic visual SLAM based on semantic segmentation
Purpose
Traditional visual simultaneous localization and mapping (SLAM) systems are primarily based on the assumption that the environment is static, which makes them struggle with the interference caused by dynamic objects in complex industrial production environments. This paper aims to improve the stability of visual SLAM in complex dynamic environments through semantic segmentation and its optimization.
Design/methodology/approach
This paper proposes a real-time visual SLAM system for complex dynamic environments based on YOLOv5s semantic segmentation, named YLS-SLAM. The system combines semantic segmentation results and the boundary semantic enhancement algorithm. By recognizing and completing the semantic masks of dynamic objects from coarse to fine, it effectively eliminates the interference of dynamic feature points on the pose estimation and enhances the retention and extraction of prominent features in the background, thereby achieving stable operation of the system in complex dynamic environments.
Findings
Experiments on the Technische Universität München and Bonn data sets show that, under monocular and Red, Green, Blue - Depth modes, the localization accuracy of YLS-SLAM is significantly better than existing advanced dynamic SLAM methods, effectively improving the robustness of visual SLAM. Additionally, the authors also conducted tests using a monocular camera in a real industrial production environment, successfully validating its effectiveness and application potential in complex dynamic environment.
Originality/value
This paper combines semantic segmentation algorithms with boundary semantic enhancement algorithms to effectively achieve precise removal of dynamic objects and their edges, while ensuring the system's real-time performance, offering significant application value.