ITSC 2025 Paper Abstract

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Paper VP-VP.38

Vaghela, Arpitsinh Rohitkumar (Arizona State University), Lu, Duo (Rider University), Verma, Aayush Atul (Arizona State University), Chakravarthi, Bharatesh (Arizona State University), Wei, Hua (Arizona State University), Yang, Yezhou (Arizona State University)

MC-BEVRO: Multi-Camera Bird Eye View Road Occupancy Detection for Traffic Monitoring

Scheduled for presentation during the Video Session "On-Demand Video Presentations" (VP-VP), Saturday, November 22, 2025, 08:00−18:00, On-Demand Platform

2025 IEEE 28th International Conference on Intelligent Transportation Systems (ITSC), November 18-21, 2025, Gold Coast, Australia

This information is tentative and subject to change. Compiled on April 2, 2026

Keywords Real-time Object Detection and Tracking for Dynamic Traffic Environments, Deep Learning for Scene Understanding and Semantic Segmentation in Autonomous Vehicles

Abstract

Single camera 3D perception for traffic monitoring faces significant challenges due to occlusion and limited field of view. Moreover, fusing information from multiple cameras at the image feature level is difficult because of different view angles. Further, the necessity for practical implementation and compatibility with existing traffic infrastructure compounds these challenges. To address these issues, this paper introduces a novel Bird's-Eye-View road occupancy detection framework that leverages multiple roadside cameras to overcome the aforementioned limitations. To facilitate the framework's development and evaluation, a synthetic dataset featuring diverse scenes and varying camera configurations is generated using the CARLA simulator. A late fusion and three early fusion methods were implemented within the proposed framework, with performance further enhanced by integrating backgrounds. Extensive evaluations were conducted to analyze the impact of multi-camera inputs and varying BEV occupancy map sizes on model performance. Additionally, a real-world data collection pipeline was developed to assess the model’s ability to generalize to real-world environments. The sim-to-real capabilities of the model were evaluated using zero-shot and few-shot fine-tuning, demonstrating its potential for practical application. This research aims to advance perception systems in traffic monitoring, contributing to improved traffic management, operational efficiency, and road safety.

 

 

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