Saved in:
Bibliographic Details
Main Authors: Dubiner, Shahar, Ren, Peng, Manduchi, Roberto
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.22406
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910005442117632
author Dubiner, Shahar
Ren, Peng
Manduchi, Roberto
author_facet Dubiner, Shahar
Ren, Peng
Manduchi, Roberto
contents The contribution describes a pedestrian navigation approach designed to improve localization accuracy in urban environments where GNSS performance is degraded, a problem that is especially critical for blind or low-vision users who depend on precise guidance such as identifying the correct side of a street. To address GNSS limitations and the impracticality of camera-based visual positioning, the work proposes a particle filter based fusion of GNSS and inertial data that incorporates spatial priors from maps, such as impassable buildings and unlikely walking areas, functioning as a probabilistic form of map matching. Inertial localization is provided by the RoNIN machine learning method, and fusion with GNSS is achieved by weighting particles based on their consistency with GNSS estimates and uncertainty. The system was evaluated on six challenging walking routes in downtown San Francisco using three metrics related to sidewalk correctness and localization error. Results show that the fused approach (GNSS+RoNIN+PF) significantly outperforms GNSS only localization on most metrics, while inertial-only localization with particle filtering also surpasses GNSS alone for critical measures such as sidewalk assignment and across street error.
format Preprint
id arxiv_https___arxiv_org_abs_2601_22406
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Accurate Pedestrian Tracking in Urban Canyons: A Multi-Modal Fusion Approach
Dubiner, Shahar
Ren, Peng
Manduchi, Roberto
Robotics
The contribution describes a pedestrian navigation approach designed to improve localization accuracy in urban environments where GNSS performance is degraded, a problem that is especially critical for blind or low-vision users who depend on precise guidance such as identifying the correct side of a street. To address GNSS limitations and the impracticality of camera-based visual positioning, the work proposes a particle filter based fusion of GNSS and inertial data that incorporates spatial priors from maps, such as impassable buildings and unlikely walking areas, functioning as a probabilistic form of map matching. Inertial localization is provided by the RoNIN machine learning method, and fusion with GNSS is achieved by weighting particles based on their consistency with GNSS estimates and uncertainty. The system was evaluated on six challenging walking routes in downtown San Francisco using three metrics related to sidewalk correctness and localization error. Results show that the fused approach (GNSS+RoNIN+PF) significantly outperforms GNSS only localization on most metrics, while inertial-only localization with particle filtering also surpasses GNSS alone for critical measures such as sidewalk assignment and across street error.
title Accurate Pedestrian Tracking in Urban Canyons: A Multi-Modal Fusion Approach
topic Robotics
url https://arxiv.org/abs/2601.22406