Vision-based traversability estimation in field environments
Author(s) -
Patrick Ross
Publication year - 2016
Language(s) - English
Resource type - Dissertations/theses
DOI - 10.5204/thesis.eprints.96033
Subject(s) - obstacle , computer science , artificial intelligence , field (mathematics) , mobile robot , computer vision , sensory cue , key (lock) , robot , geography , mathematics , archaeology , computer security , pure mathematics
Robust obstacle detection and traversability estimation remain a challenges for mobile robots traversing outdoor field environments. Illumination and environmental variances limit the applicability of appearance cues, while vegetation limits structure cues. Systems that combine multiple cues can potentially overcome deficiencies in individual cues. A key challenge in designing multi-sensor systems is to automatically and appropriately combine these cues in an unsupervised manner. This thesis presents methods for online obstacle detection and traversability estimation in field environments which continuously learn online about environmental and illumination conditions, and can operate in the presence of significant vegetation. The results demonstrate these methods in online field experiments and show that they give competitive performance without the requirement of pre-training or environment-specific tuning
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