ITSC 2025 Paper Abstract

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Paper VP-VP.119

Chanda, Kaustav (Arizona State University), Verma, Aayush Atul (Arizona State University), Vaghela, Arpitsinh Rohitkumar (Arizona State University), Yang, Yezhou (Arizona State University), Chakravarthi, Bharatesh (Arizona State University)

SEPose: A Synthetic Event-Based Human Pose Estimation Dataset for Pedestrian 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 Protection Strategies for Vulnerable Road Users (Pedestrians, Cyclists, etc.), Advanced Sensor Fusion for Robust Autonomous Vehicle Perception, Traffic Management for Autonomous Multi-vehicle Operations

Abstract

Event-based sensors have emerged as a promising solution for addressing challenging conditions in pedestrian and traffic monitoring systems. Their low-latency and high dynamic range allow for improved response time in safety-critical situations caused by distracted walking or other unusual movements. However, the availability of data covering such scenarios remains limited. To address this gap, we present SEPose -- a comprehensive synthetic event-based human pose estimation dataset for fixed pedestrian perception generated using dynamic vision sensors in the CARLA simulator. With nearly 350K annotated pedestrians with body pose keypoints from the perspective of fixed traffic cameras, SEPose is a comprehensive synthetic multi-person pose estimation dataset that spans busy and light crowds and traffic across diverse lighting and weather conditions in 4-way intersections in urban, suburban, and rural environments. We train existing state-of-the-art models such as RVT and YOLOv8 on our dataset and evaluate them on real event-based data to demonstrate the sim-to-real generalization capabilities of the proposed dataset.

 

 

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