Leg Failure
Leg failure, encompassing a broad range of malfunctions in robotic systems and AI models, is a critical research area focused on improving robustness and reliability. Current research investigates failure detection and mitigation strategies using vision-language models, reinforcement learning, and advanced techniques like physics-informed neural networks, often addressing issues in long sequence processing and knowledge editing within large language models. Understanding and addressing these failures is crucial for advancing the safety and dependability of autonomous systems, particularly in applications like robotics, autonomous driving, and healthcare, where reliable performance is paramount.
Papers
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