VWise: A Novel Benchmark for Evaluating Scene Classification for Vehicular Applications

1Voxar Labs, Centro de Informática, Universidade Federal de Pernambuco, Brazil
2Departamento de Eletrônica e Sistemas, Universidade Federal de Pernambuco, Brazil
3Volkswagen Trucks and Bus
4Eyeflow.ai

Vwise is a novel benchmark focused in Latin America

Abstract

Current datasets for vehicular applications are mostly collected in North America or Europe. Models trained or evaluated on these datasets might suffer from geographical bias when deployed in other regions. Specifically, for scene classification, a highway in a Latin American country differs drastically from an Autobahn, for example, both in design and maintenance levels. We propose VWise, a novel benchmark for road-type classification and scene classification tasks, in addition to tasks focused on external contexts related to vehicular applications in LatAm. We collected over 520 video clips covering diverse urban and rural environments across Latin American countries, annotated with six classes of road types. We also evaluated several state-of-the-art classification models in baseline experiments, obtaining over 84\% accuracy. With this dataset, we aim to enhance research on vehicular tasks in Latin America.

Access to data

Please contact wlc2@cin.ufpe.br to request data access, informing your intended use and affiliation.

BibTeX

@article{azevedo2024vwise,
  title={VWise: A novel benchmark for evaluating scene classification for vehicular applications},
  author={Azevedo, Pedro and Ara{\'u}jo, Emanuella and Pierre, Gabriel and Costa, Willams de Lima and Teixeira, Jo{\~a}o Marcelo and Ferreira, Valter and Jones, Roberto and Teichrieb, Veronica},
  journal={arXiv preprint arXiv:2406.03273},
  year={2024}
}