Watch Your Step: Learning Semantically-Guided Locomotion in Cluttered Environment
This addresses a safety challenge for legged robots operating in cluttered environments, representing a domain-specific incremental improvement.
The paper tackles the problem of legged robots stepping on low-lying objects in cluttered environments by introducing SemLoco, a reinforcement learning framework that integrates semantic maps for traversability costs and pixel-wise foothold safety inference, resulting in greatly reduced collisions and improved safety around sensitive objects.
Although legged robots demonstrate impressive mobility on rough terrain, using them safely in cluttered environments remains a challenge. A key issue is their inability to avoid stepping on low-lying objects, such as high-cost small devices or cables on flat ground. This limitation arises from a disconnection between high-level semantic understanding and low-level control, combined with errors in elevation maps during real-world operation. To address this, we introduce SemLoco, a Reinforcement Learning (RL) framework designed to avoid obstacles precisely in densely cluttered environments. SemLoco uses a two-stage RL approach that combines both soft and hard constraints. It performs pixel-wise foothold safety inference, which enables more accurate foot placement. Additionally, SemLoco integrates semantic map, allowing it to assign traversability costs instead of relying only on geometric data. SemLoco greatly reduces collisions and improves safety around sensitive objects, enabling reliable navigation in situations where traditional controllers would likely cause damage. Experimental results further show that SemLoco can be effectively applied to more complex, unstructured real-world environments. A demo video can be view at https://youtu.be/FSq-RSmIxOM.