A Partially Supervised Reinforcement Learning Framework for Visual Active Search
Anindya Sarkar, Nathan Jacobs, Yevgeniy Vorobeychik

TL;DR
This paper introduces a hybrid reinforcement learning framework for visual active search that combines deep learning and traditional methods, utilizing meta-learning to improve search efficiency in diverse geospatial tasks.
Contribution
It proposes a novel decomposed policy with a meta-learning approach to effectively leverage supervised information during training and search.
Findings
Significantly outperforms existing methods in multiple domains.
Effective use of supervised data improves search accuracy.
Meta-learning enhances adaptability to different search tasks.
Abstract
Visual active search (VAS) has been proposed as a modeling framework in which visual cues are used to guide exploration, with the goal of identifying regions of interest in a large geospatial area. Its potential applications include identifying hot spots of rare wildlife poaching activity, search-and-rescue scenarios, identifying illegal trafficking of weapons, drugs, or people, and many others. State of the art approaches to VAS include applications of deep reinforcement learning (DRL), which yield end-to-end search policies, and traditional active search, which combines predictions with custom algorithmic approaches. While the DRL framework has been shown to greatly outperform traditional active search in such domains, its end-to-end nature does not make full use of supervised information attained either during training, or during actual search, a significant limitation if search…
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Taxonomy
TopicsDiffusion and Search Dynamics · Optimization and Search Problems · Auction Theory and Applications
