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Autores principales: Chaar, Mohamad Mofeed, Raiyn, Jamal, Weidl, Galia
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.16773
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author Chaar, Mohamad Mofeed
Raiyn, Jamal
Weidl, Galia
author_facet Chaar, Mohamad Mofeed
Raiyn, Jamal
Weidl, Galia
contents The CARLA simulator (Car Learning to Act) serves as a robust platform for testing algorithms and generating datasets in the field of Autonomous Driving (AD). It provides control over various environmental parameters, enabling thorough evaluation. Development bounding boxes are commonly utilized tools in deep learning and play a crucial role in AD applications. The predominant method for data generation in the CARLA Simulator involves identifying and delineating objects of interest, such as vehicles, using bounding boxes. The operation in CARLA entails capturing the coordinates of all objects on the map, which are subsequently aligned with the sensor's coordinate system at the ego vehicle and then enclosed within bounding boxes relative to the ego vehicle's perspective. However, this primary approach encounters challenges associated with object detection and bounding box annotation, such as ghost boxes. Although these procedures are generally effective at detecting vehicles and other objects within their direct line of sight, they may also produce false positives by identifying objects that are obscured by obstructions. We have enhanced the primary approach with the objective of filtering out unwanted boxes. Performance analysis indicates that the improved approach has achieved high accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2509_16773
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Improve bounding box in Carla Simulator
Chaar, Mohamad Mofeed
Raiyn, Jamal
Weidl, Galia
Robotics
Graphics
The CARLA simulator (Car Learning to Act) serves as a robust platform for testing algorithms and generating datasets in the field of Autonomous Driving (AD). It provides control over various environmental parameters, enabling thorough evaluation. Development bounding boxes are commonly utilized tools in deep learning and play a crucial role in AD applications. The predominant method for data generation in the CARLA Simulator involves identifying and delineating objects of interest, such as vehicles, using bounding boxes. The operation in CARLA entails capturing the coordinates of all objects on the map, which are subsequently aligned with the sensor's coordinate system at the ego vehicle and then enclosed within bounding boxes relative to the ego vehicle's perspective. However, this primary approach encounters challenges associated with object detection and bounding box annotation, such as ghost boxes. Although these procedures are generally effective at detecting vehicles and other objects within their direct line of sight, they may also produce false positives by identifying objects that are obscured by obstructions. We have enhanced the primary approach with the objective of filtering out unwanted boxes. Performance analysis indicates that the improved approach has achieved high accuracy.
title Improve bounding box in Carla Simulator
topic Robotics
Graphics
url https://arxiv.org/abs/2509.16773