IndoorSim-to-OutdoorReal: Learning to Navigate Outdoors without any Outdoor Experience
Joanne Truong, April Zitkovich, Sonia Chernova, Dhruv Batra, Tingnan, Zhang, Jie Tan, Wenhao Yu

TL;DR
This paper introduces IndoorSim-to-OutdoorReal (I2O), a visual navigation method trained solely in indoor simulation that successfully transfers to outdoor environments without real-world training, using approximate context maps to guide long-range navigation.
Contribution
The paper presents a novel zero-shot sim-to-real transfer approach for outdoor navigation using simulated indoor training and context maps, without outdoor experience or detailed environmental modeling.
Findings
Successfully navigates hundreds of meters outdoors without collisions.
Leverages approximate context maps to guide navigation in novel environments.
Robust to noise and inaccuracies in the provided context maps.
Abstract
We present IndoorSim-to-OutdoorReal (I2O), an end-to-end learned visual navigation approach, trained solely in simulated short-range indoor environments, and demonstrates zero-shot sim-to-real transfer to the outdoors for long-range navigation on the Spot robot. Our method uses zero real-world experience (indoor or outdoor), and requires the simulator to model no predominantly-outdoor phenomenon (sloped grounds, sidewalks, etc). The key to I2O transfer is in providing the robot with additional context of the environment (i.e., a satellite map, a rough sketch of a map by a human, etc.) to guide the robot's navigation in the real-world. The provided context-maps do not need to be accurate or complete -- real-world obstacles (e.g., trees, bushes, pedestrians, etc.) are not drawn on the map, and openings are not aligned with where they are in the real-world. Crucially, these inaccurate…
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Taxonomy
TopicsEvacuation and Crowd Dynamics · Multimodal Machine Learning Applications · Robotics and Sensor-Based Localization
