DFD-SLAM: Visual SLAM with Deep Features in Dynamic Environment

Author:

Qian Wei1ORCID,Peng Jiansheng1234,Zhang Hongyu1

Affiliation:

1. College of Automation, Guangxi University of Science and Technology, Liuzhou 545000, China

2. Department of Artificial Intelligence and Manufacturing, Hechi University, Hechi 547000, China

3. Key Laboratory of AI and Information Processing, Hechi University, Education Department of Guangxi Zhuang Autonomous Region, Hechi 547000, China

4. Guangxi Key Laboratory of Sericulture Ecology and Applied Intelligent Technology, School of Chemistry and Bioengineering, Hechi University, Hechi 546300, China

Abstract

Visual SLAM technology is one of the important technologies for mobile robots. Existing feature-based visual SLAM techniques suffer from tracking and loop closure performance degradation in complex environments. We propose the DFD-SLAM system to ensure outstanding accuracy and robustness across diverse environments. Initially, building on the ORB-SLAM3 system, we replace the original feature extraction component with the HFNet network and introduce a frame rotation estimation method. This method determines the rotation angles between consecutive frames to select superior local descriptors. Furthermore, we utilize CNN-extracted global descriptors to replace the bag-of-words approach. Subsequently, we develop a precise removal strategy, combining semantic information from YOLOv8 to accurately eliminate dynamic feature points. In the TUM-VI dataset, DFD-SLAM shows an improvement over ORB-SLAM3 of 29.24% in the corridor sequences, 40.07% in the magistrale sequences, 28.75% in the room sequences, and 35.26% in the slides sequences. In the TUM-RGBD dataset, DFD-SLAM demonstrates a 91.57% improvement over ORB-SLAM3 in highly dynamic scenarios. This demonstrates the effectiveness of our approach.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Guangxi Province

Innovation Fund of Chinese Universities Industry-University-Research

Special Research Project of Hechi University

Publisher

MDPI AG

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