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Main Authors: Manzour, Mohamed, Elias, Catherine M., Shehata, Omar M., Izquierdo, Rubén, Sotelo, Miguel Ángel
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.20218
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author Manzour, Mohamed
Elias, Catherine M.
Shehata, Omar M.
Izquierdo, Rubén
Sotelo, Miguel Ángel
author_facet Manzour, Mohamed
Elias, Catherine M.
Shehata, Omar M.
Izquierdo, Rubén
Sotelo, Miguel Ángel
contents Research on lane change prediction has gained attention in the last few years. Most existing works in this area have been conducted in simulation environments or with pre-recorded datasets, these works often rely on simplified assumptions about sensing, communication, and traffic behavior that do not always hold in practice. Real-world deployments of lane-change prediction systems are relatively rare, and when they are reported, the practical challenges, limitations, and lessons learned are often under-documented. This study explores cooperative lane-change prediction through a real hardware deployment in mixed traffic and shares the insights that emerged during implementation and testing. We highlight the practical challenges we faced, including bottlenecks, reliability issues, and operational constraints that shaped the behavior of the system. By documenting these experiences, the study provides guidance for others working on similar pipelines.
format Preprint
id arxiv_https___arxiv_org_abs_2509_20218
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Design Insights and Comparative Evaluation of a Hardware-Based Cooperative Perception Architecture for Lane Change Prediction
Manzour, Mohamed
Elias, Catherine M.
Shehata, Omar M.
Izquierdo, Rubén
Sotelo, Miguel Ángel
Artificial Intelligence
Hardware Architecture
Computer Vision and Pattern Recognition
Machine Learning
Research on lane change prediction has gained attention in the last few years. Most existing works in this area have been conducted in simulation environments or with pre-recorded datasets, these works often rely on simplified assumptions about sensing, communication, and traffic behavior that do not always hold in practice. Real-world deployments of lane-change prediction systems are relatively rare, and when they are reported, the practical challenges, limitations, and lessons learned are often under-documented. This study explores cooperative lane-change prediction through a real hardware deployment in mixed traffic and shares the insights that emerged during implementation and testing. We highlight the practical challenges we faced, including bottlenecks, reliability issues, and operational constraints that shaped the behavior of the system. By documenting these experiences, the study provides guidance for others working on similar pipelines.
title Design Insights and Comparative Evaluation of a Hardware-Based Cooperative Perception Architecture for Lane Change Prediction
topic Artificial Intelligence
Hardware Architecture
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2509.20218