Learning Semantic Priorities for Autonomous Target Search
Max Lodel, Nils Wilde, Robert Babu\v{s}ka, Javier Alonso-Mora

TL;DR
This paper introduces a semantic priority model trained with expert input to enhance autonomous target search efficiency in unknown environments, outperforming traditional coverage methods.
Contribution
It presents a novel approach that leverages expert-guided semantic priorities integrated into a frontier exploration planner for robust, efficient target search.
Findings
Faster target recovery compared to coverage-driven exploration.
Robustness and complete coverage in diverse environments.
Effective use of synthetic datasets for training.
Abstract
The use of semantic features can improve the efficiency of target search in unknown environments for robotic search and rescue missions. Current target search methods rely on training with large datasets of similar domains, which limits the adaptability to diverse environments. However, human experts possess high-level knowledge about semantic relationships necessary to effectively guide a robot during target search missions in diverse and previously unseen environments. In this paper, we propose a target search method that leverages expert input to train a model of semantic priorities. By employing the learned priorities in a frontier exploration planner using combinatorial optimization, our approach achieves efficient target search driven by semantic features while ensuring robustness and complete coverage. The proposed semantic priority model is trained with several synthetic…
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