Introspection for Long-Horizon Robot Planning under Uncertainty
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Paudel, Abhishek
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IEEE ICRA 2025 Doctoral Consortium
Abstract
The next generation of household service robots must not only perform day-to-day tasks effectively, but also learn and improve over time by continuously evaluating their own performance. My research focuses on introspection as a technique that enables a robot to self-assess its behavior while performing long-horizon tasks in environments that may not be fully known. We show that such introspection enables improved performance in tasks such as navigation in unknown environments, deployment-time learning and adaptation, and LLM-informed object search.
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Paudel, Abhishek. Introspection for Long-Horizon Robot Planning under Uncertainty. IEEE ICRA Doctoral Consortium. 2025.
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