CART: Context-Aware Terrain Adaptation using Temporal Sequence Selection for Legged Robots
Kartikeya Singh, Youngjin Kim, Yash Turkar, and Karthik Dantu

TL;DR
CART is a high-level controller that enhances legged robots' terrain adaptation by integrating proprioception and vision, improving stability and success rates on complex terrains in simulation and real-world tests.
Contribution
This work introduces CART, a novel context-aware terrain adaptation method combining multiple sensor modalities for improved robustness.
Findings
CART achieves 5% higher success rate than baselines in simulation.
CART improves stability by up to 45% in real-world experiments.
CART does not increase the time taken for locomotion tasks.
Abstract
Animals in nature combine multiple modalities, such as sight and feel, to perceive terrain and develop an understanding of how to walk on uneven terrain in a stable manner. Similarly, legged robots need to develop their ability to stably walk on complex terrains by developing an understanding of the relationship between vision and proprioception. Most current terrain adaptation methods are susceptible to failure on complex, off-road terrain as they rely on prior experience, particularly observations from a vision sensor. This experience-based learning often creates a Visual-Texture Paradox between what has been seen and how it actually feels. In this work, we introduce CART, a high-level controller built on a context-aware terrain adaptation approach that integrates proprioception and exteroception from onboard sensing to achieve a robust understanding of terrain. We evaluate our method…
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