Laser & Optoelectronics Progress, Volume. 62, Issue 10, 1015007(2025)
Dynamic SLAM Algorithm Based on Object Detection and Point-Line Feature Association
To address challenges such as time consumption, interference from dynamic objects, insufficient feature points leading to low real-time performance, reduced mapping accuracy, and inaccurate pose estimation in indoor dynamic environment mapping of visual SLAM (simultaneous localization and mapping) systems, this study proposes a visual SLAM algorithm based on object detection and point-line feature association, referred to as LDF-SLAM. To mitigate time consumption and dynamic object interference, MobileNetV3 is introduced to replace the YOLOv8 backbone network, thereby reducing the number of network parameters. A parameter-free attention-enhanced ResAM module is designed and integrated with the MobileNetV3 network to create a lightweight detection network to enhance detection capability and efficiently identify dynamic objects. Subsequently, the multi-view geometry method is introduced to compensate, filter and reject potential dynamic feature points together with the improved lightweight network, and the remaining static feature points are used to construct a dense point cloud map, thereby improving the mapping accuracy of the SLAM system. In addition, to resolve inaccuracies in pose estimation due to insufficient static feature points, a fusion FLD line feature extraction method is proposed to enhance pose estimation accuracy. A line segment length suppression mechanism is also designed to ensure the system's real-time performance and improve its robustness. Experiments conducted on the TUM and Bonn data sets demonstrate that the root-mean-square-error (RMSE) of absolute trajectory error of LDF-SLAM is reduced and outperforms other mainstream SLAM algorithms, significantly enhancing the robustness and accuracy of the SLAM system in dynamic environments.
Get Citation
Copy Citation Text
Wenxuan Deng, Jianwu Dang, Jiu Yong. Dynamic SLAM Algorithm Based on Object Detection and Point-Line Feature Association[J]. Laser & Optoelectronics Progress, 2025, 62(10): 1015007
Category: Machine Vision
Received: Sep. 26, 2024
Accepted: Nov. 18, 2024
Published Online: Apr. 27, 2025
The Author Email: Dang Jianwu (dangjw@mail.lzjtu.cn)
CSTR:32186.14.LOP242050