Integrated Intelligent Energy ›› 2026, Vol. 48 ›› Issue (2): 47-58.doi: 10.3969/j.issn.2097-0706.2026.02.005

• Maintanence and Inspection based on AI • Previous Articles     Next Articles

Improvement of feature point filtering algorithm for dynamic scenarios in substations based on fusion of YOLOv5 and ORB-SLAM

HE Longqing1(), LI Xiaoyong2(), SHI Xin2(), JIANG Han3(), LI Yuqiang4(), WANG Yongjun4(), WANG Kai1,*()   

  1. 1. College of Electrical EngineeringQingdao UniversityQingdao 266071, China
    2. Shandong Guangyu Technology Company LimitedDongying 257029, China
    3. Fushun Thermal Power BranchState Power Investment Corporation Northeast Electric Power Company LimitedFushun 113010, China
    4. Qingdao Haier Intelligent Technology Research and Development Company LimitedQingdao 266101, China
  • Received:2025-09-15 Revised:2025-11-30 Published:2026-02-25
  • Contact: WANG Kai E-mail:hlq20011225@163.com;275314252@qq.com;372300812@qq.com;1026172648@qq.com;liyuqiang920@163.com;thywyj@126.com;wkwj888@163.com
  • Supported by:
    Central Guidance Funds for Local Science and Technology Development Projects(YDZX2024060)

Abstract:

To address the degradation in localization and mapping accuracy of intelligent inspection robots under complex and dynamic operating conditions in substations,an enhanced localization and mapping architecture integrating improved CA-YOLOv5 target detection was proposed. A multimodal attention mechanism was used to optimize the CA-YOLOv5 network and construct a real-time dynamic target recognition framework. A semantic-geometric joint constraint strategy was used to establish a dynamic region mask and a motion probability model during the feature matching stage. A dynamic feature filtering algorithm based on spatiotemporal consistency was designed to achieve precise elimination of dynamic interference sources and the effective preservation of the static scene structure in the BA optimization process. Comparative experiments on public datasets and real dynamic scenarios demonstrated that the improved system reduced the localization errors by 43.7% and improved the map reconstruction completeness by 41.5% in dynamic environments,while maintaining satisfactory real-time processing performance. The fusion framework effectively solves the problems of mismatching and map pollution caused by dynamic elements,thereby overcoming typical dynamic disturbances in substations.

Key words: ORB-SLAM3, YOLO, intelligent inspection, sensor recognition, dynamic removal, substation, attention mechanism

CLC Number: