Saved in:
Bibliographic Details
Main Authors: Nayak, Abhijeet, Makowski, Débora Oliveira, Gode, Samiran, Schmid, Cordelia, Burgard, Wolfram
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.13965
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914379112382464
author Nayak, Abhijeet
Makowski, Débora Oliveira
Gode, Samiran
Schmid, Cordelia
Burgard, Wolfram
author_facet Nayak, Abhijeet
Makowski, Débora Oliveira
Gode, Samiran
Schmid, Cordelia
Burgard, Wolfram
contents Generative navigation policies have made rapid progress in improving end-to-end learned navigation. Despite their promising results, this paradigm has two structural problems. First, the sampled trajectories exist in an abstract, unscaled space without metric grounding. Second, the control strategy discards the full path, instead moving directly towards a single waypoint. This leads to short-sighted and unsafe actions, moving the robot towards obstacles that a complete and correctly scaled path would circumvent. To address these issues, we propose MetricNet, an effective add-on for generative navigation that predicts the metric distance between waypoints, grounding policy outputs in metric coordinates. We evaluate our method in simulation with a new benchmarking framework and show that executing MetricNet-scaled waypoints significantly improves both navigation and exploration performance. Beyond simulation, we further validate our approach in real-world experiments. Finally, we propose MetricNav, which integrates MetricNet into a navigation policy to guide the robot away from obstacles while still moving towards the goal.
format Preprint
id arxiv_https___arxiv_org_abs_2509_13965
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MetricNet: Recovering Metric Scale in Generative Navigation Policies
Nayak, Abhijeet
Makowski, Débora Oliveira
Gode, Samiran
Schmid, Cordelia
Burgard, Wolfram
Robotics
Computer Vision and Pattern Recognition
Generative navigation policies have made rapid progress in improving end-to-end learned navigation. Despite their promising results, this paradigm has two structural problems. First, the sampled trajectories exist in an abstract, unscaled space without metric grounding. Second, the control strategy discards the full path, instead moving directly towards a single waypoint. This leads to short-sighted and unsafe actions, moving the robot towards obstacles that a complete and correctly scaled path would circumvent. To address these issues, we propose MetricNet, an effective add-on for generative navigation that predicts the metric distance between waypoints, grounding policy outputs in metric coordinates. We evaluate our method in simulation with a new benchmarking framework and show that executing MetricNet-scaled waypoints significantly improves both navigation and exploration performance. Beyond simulation, we further validate our approach in real-world experiments. Finally, we propose MetricNav, which integrates MetricNet into a navigation policy to guide the robot away from obstacles while still moving towards the goal.
title MetricNet: Recovering Metric Scale in Generative Navigation Policies
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.13965