DTC: Deep Tracking Control
Fabian Jenelten, Junzhe He, Farbod Farshidian, Marco Hutter

TL;DR
This paper introduces a hybrid control system for legged robots that combines model-based planning with deep learning to improve robustness, accuracy, and terrain adaptability in complex environments.
Contribution
It presents a novel hybrid architecture that integrates trajectory optimization with deep neural network policies for enhanced legged locomotion.
Findings
Improved foot-placement accuracy on sparse terrains.
Enhanced robustness against slippery and deformable ground.
Good generalization across different trajectory optimization methods.
Abstract
Legged locomotion is a complex control problem that requires both accuracy and robustness to cope with real-world challenges. Legged systems have traditionally been controlled using trajectory optimization with inverse dynamics. Such hierarchical model-based methods are appealing due to intuitive cost function tuning, accurate planning, generalization, and most importantly, the insightful understanding gained from more than one decade of extensive research. However, model mismatch and violation of assumptions are common sources of faulty operation. Simulation-based reinforcement learning, on the other hand, results in locomotion policies with unprecedented robustness and recovery skills. Yet, all learning algorithms struggle with sparse rewards emerging from environments where valid footholds are rare, such as gaps or stepping stones. In this work, we propose a hybrid control…
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