CVAILGROFeb 18, 2019

DIViS: Domain Invariant Visual Servoing for Collision-Free Goal Reaching

arXiv:1902.05947v114 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of autonomous robot navigation and interaction in unstructured environments, representing an incremental improvement by combining existing methods for domain invariance and collision avoidance.

The paper tackles the problem of teaching robots to perform real-world tasks with minimal human effort by proposing DIViS, a domain invariant policy learning approach for visual servoing that enables mobile robots to reach user-specified object categories while avoiding collisions, and it demonstrates generalization in over 90 real-world test scenarios with unseen objects.

Robots should understand both semantics and physics to be functional in the real world. While robot platforms provide means for interacting with the physical world they cannot autonomously acquire object-level semantics without needing human. In this paper, we investigate how to minimize human effort and intervention to teach robots perform real world tasks that incorporate semantics. We study this question in the context of visual servoing of mobile robots and propose DIViS, a Domain Invariant policy learning approach for collision free Visual Servoing. DIViS incorporates high level semantics from previously collected static human-labeled datasets and learns collision free servoing entirely in simulation and without any real robot data. However, DIViS can directly be deployed on a real robot and is capable of servoing to the user-specified object categories while avoiding collisions in the real world. DIViS is not constrained to be queried by the final view of goal but rather is robust to servo to image goals taken from initial robot view with high occlusions without this impairing its ability to maintain a collision free path. We show the generalization capability of DIViS on real mobile robots in more than 90 real world test scenarios with various unseen object goals in unstructured environments. DIViS is compared to prior approaches via real world experiments and rigorous tests in simulation. For supplementary videos, see: \href{https://fsadeghi.github.io/DIViS}{https://fsadeghi.github.io/DIViS}

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