Publication: A Context-Aware Doorway Alignment and Depth Estimation Algorithm for Assistive Wheelchairs
Type:
Article
Date
2025-07-17
Journal Title
Journal ISSN
Volume Title
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Abstract
Navigating through doorways remains a daily challenge for wheelchair users, often leading to frustration, collisions, or dependence on assistance. These challenges highlight a pressing need for intelligent doorway detection algorithm for assistive wheelchairs that go beyond traditional object detection. This study presents the algorithmic development of a lightweight, vision-based doorway detection and alignment module with contextual awareness. It integrates channel and spatial attention, semantic feature fusion, unsupervised depth estimation, and doorway alignment that offers real-time navigational guidance to the wheelchairs control system. The model achieved a mean average precision of 95.8% and a F1 score of 93%, while maintaining low computational demands suitable for future deployment on embedded systems. By eliminating the need for depth sensors and enabling contextual awareness, this study offers a robust solution to improve indoor mobility and deliver actionable feedback to support safe and independent doorway traversal for wheelchair users.
Description
Keywords
assistive navigation, context-aware, doorway detection, indoor navigation, vision-based navigation, wheelchair guidance, YOLOv8 segmentation
Citation
Tennekoon, S.; Wedasingha, N.; Welhenge, A.; Abhayasinghe, N.; Murray, I. A Context-Aware Doorway Alignment and Depth Estimation Algorithm for Assistive Wheelchairs. Computers 2025, 14, 284. https://doi.org/10.3390/computers14070284 AMA Style
