ViNL: Visual Navigation and Locomotion Over Obstacles
Simar Kareer, Naoki Yokoyama, Dhruv Batra, Sehoon Ha, Joanne Truong

TL;DR
ViNL enables quadrupedal robots to navigate and traverse cluttered, unseen indoor environments using vision-based policies for navigation and obstacle-avoiding locomotion, trained independently and deployed seamlessly.
Contribution
First fully learned, vision-based approach combining navigation and locomotion policies trained separately and deployed zero-shot for indoor obstacle navigation.
Findings
Outperforms prior methods in goal navigation success (+32.8%)
Reduces obstacle collisions by ablation studies
Effective zero-shot deployment of separate policies
Abstract
We present Visual Navigation and Locomotion over obstacles (ViNL), which enables a quadrupedal robot to navigate unseen apartments while stepping over small obstacles that lie in its path (e.g., shoes, toys, cables), similar to how humans and pets lift their feet over objects as they walk. ViNL consists of: (1) a visual navigation policy that outputs linear and angular velocity commands that guides the robot to a goal coordinate in unfamiliar indoor environments; and (2) a visual locomotion policy that controls the robot's joints to avoid stepping on obstacles while following provided velocity commands. Both the policies are entirely "model-free", i.e. sensors-to-actions neural networks trained end-to-end. The two are trained independently in two entirely different simulators and then seamlessly co-deployed by feeding the velocity commands from the navigator to the locomotor, entirely…
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Taxonomy
TopicsHuman Pose and Action Recognition · Multimodal Machine Learning Applications · Video Surveillance and Tracking Methods
