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Main Authors: Giannico, Enrico Francesco, Nesti, Federico, D'Amico, Gianluca, Marinoni, Mauro, Carosio, Edoardo, Salotti, Filippo, Sabina, Salvatore, Buttazzo, Giorgio
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.14781
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author Giannico, Enrico Francesco
Nesti, Federico
D'Amico, Gianluca
Marinoni, Mauro
Carosio, Edoardo
Salotti, Filippo
Sabina, Salvatore
Buttazzo, Giorgio
author_facet Giannico, Enrico Francesco
Nesti, Federico
D'Amico, Gianluca
Marinoni, Mauro
Carosio, Edoardo
Salotti, Filippo
Sabina, Salvatore
Buttazzo, Giorgio
contents Obstacle detection in railway environments is crucial for ensuring safety. However, very few studies address the problem using a complete, modular, and flexible system that can both detect objects in the scene and estimate their distance from the vehicle. Most works focus solely on detection, others attempt to identify the track, and only a few estimate obstacle distances. Additionally, evaluating these systems is challenging due to the lack of ground truth data. In this paper, we propose a modular and flexible framework that identifies the rail track, detects potential obstacles, and estimates their distance by integrating three neural networks for object detection, track segmentation, and monocular depth estimation with LiDAR point clouds. To enable a reliable and quantitative evaluation, the proposed framework is assessed using a synthetic dataset (SynDRA), which provides accurate ground truth annotations, allowing for direct performance comparison with existing methods. The proposed system achieves a mean absolute error (MAE) as low as 0.63 meters by integrating monocular depth maps with LiDAR, enabling not only accurate distance estimates but also spatial perception of the scene.
format Preprint
id arxiv_https___arxiv_org_abs_2604_14781
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Integrating Object Detection, LiDAR-Enhanced Depth Estimation, and Segmentation Models for Railway Environments
Giannico, Enrico Francesco
Nesti, Federico
D'Amico, Gianluca
Marinoni, Mauro
Carosio, Edoardo
Salotti, Filippo
Sabina, Salvatore
Buttazzo, Giorgio
Computer Vision and Pattern Recognition
Obstacle detection in railway environments is crucial for ensuring safety. However, very few studies address the problem using a complete, modular, and flexible system that can both detect objects in the scene and estimate their distance from the vehicle. Most works focus solely on detection, others attempt to identify the track, and only a few estimate obstacle distances. Additionally, evaluating these systems is challenging due to the lack of ground truth data. In this paper, we propose a modular and flexible framework that identifies the rail track, detects potential obstacles, and estimates their distance by integrating three neural networks for object detection, track segmentation, and monocular depth estimation with LiDAR point clouds. To enable a reliable and quantitative evaluation, the proposed framework is assessed using a synthetic dataset (SynDRA), which provides accurate ground truth annotations, allowing for direct performance comparison with existing methods. The proposed system achieves a mean absolute error (MAE) as low as 0.63 meters by integrating monocular depth maps with LiDAR, enabling not only accurate distance estimates but also spatial perception of the scene.
title Integrating Object Detection, LiDAR-Enhanced Depth Estimation, and Segmentation Models for Railway Environments
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.14781