MicroVision: An Open Dataset and Benchmark Models for Detecting Vulnerable Road Users and Micromobility Vehicles
Alexander Rasch, Rahul Rajendra Pai

TL;DR
The paper introduces MicroVision, a comprehensive open dataset and benchmark models for detecting vulnerable road users and micromobility vehicles from a VRU perspective, addressing gaps in existing datasets for traffic safety applications.
Contribution
It provides a new, diverse dataset with annotations for VRUs and MMVs, and benchmarks state-of-the-art detection models trained on this data.
Findings
Achieved up to 0.723 mean average precision in detection tasks.
Dataset includes over 8,000 images with 30,000 annotations from a VRU perspective.
Supports improved traffic safety and monitoring of micromobility use.
Abstract
Micromobility is a growing mode of transportation, raising new challenges for traffic safety and planning due to increased interactions in areas where vulnerable road users (VRUs) share the infrastructure with micromobility, including parked micromobility vehicles (MMVs). Approaches to support traffic safety and planning increasingly rely on detecting road users in images -- a computer-vision task relying heavily on the quality of the images to train on. However, existing open image datasets for training such models lack focus and diversity in VRUs and MMVs, for instance, by categorizing both pedestrians and MMV riders as "person", or by not including new MMVs like e-scooters. Furthermore, datasets are often captured from a car perspective and lack data from areas where only VRUs travel (sidewalks, cycle paths). To help close this gap, we introduce the MicroVision dataset: an open image…
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Taxonomy
TopicsAdvanced Neural Network Applications · Smart Parking Systems Research · Autonomous Vehicle Technology and Safety
