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Main Authors: Huang, Chi-Yao, Bhatt, Zeel, Yang, Yezhou
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.00243
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author Huang, Chi-Yao
Bhatt, Zeel
Yang, Yezhou
author_facet Huang, Chi-Yao
Bhatt, Zeel
Yang, Yezhou
contents Breakthroughs in visual odometry (VO) have fundamentally reshaped the landscape of robotics, enabling ultra-precise camera state estimation that is crucial for modern autonomous systems. Despite these advances, many learning-based VO techniques rely on rigid geometric assumptions, which often fall short in interpretability and lack a solid theoretical basis within fully data-driven frameworks. To overcome these limitations, we introduce VOCAL (Visual Odometry via ContrAstive Learning), a novel framework that reimagines VO as a label ranking challenge. By integrating Bayesian inference with a representation learning framework, VOCAL organizes visual features to mirror camera states. The ranking mechanism compels similar camera states to converge into consistent and spatially coherent representations within the latent space. This strategic alignment not only bolsters the interpretability of the learned features but also ensures compatibility with multimodal data sources. Extensive evaluations on the KITTI dataset highlight VOCAL's enhanced interpretability and flexibility, pushing VO toward more general and explainable spatial intelligence.
format Preprint
id arxiv_https___arxiv_org_abs_2507_00243
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VOCAL: Visual Odometry via ContrAstive Learning
Huang, Chi-Yao
Bhatt, Zeel
Yang, Yezhou
Computer Vision and Pattern Recognition
Breakthroughs in visual odometry (VO) have fundamentally reshaped the landscape of robotics, enabling ultra-precise camera state estimation that is crucial for modern autonomous systems. Despite these advances, many learning-based VO techniques rely on rigid geometric assumptions, which often fall short in interpretability and lack a solid theoretical basis within fully data-driven frameworks. To overcome these limitations, we introduce VOCAL (Visual Odometry via ContrAstive Learning), a novel framework that reimagines VO as a label ranking challenge. By integrating Bayesian inference with a representation learning framework, VOCAL organizes visual features to mirror camera states. The ranking mechanism compels similar camera states to converge into consistent and spatially coherent representations within the latent space. This strategic alignment not only bolsters the interpretability of the learned features but also ensures compatibility with multimodal data sources. Extensive evaluations on the KITTI dataset highlight VOCAL's enhanced interpretability and flexibility, pushing VO toward more general and explainable spatial intelligence.
title VOCAL: Visual Odometry via ContrAstive Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.00243