OOD-CV

Out Of Distribution Generalization in Computer Vision

Dataset Information
Modalities
Images, 3D
Introduced
2021
License
Unknown
Homepage

Overview

Enhancing the robustness of vision algorithms in real-world scenarios is challenging. One reason is that existing robustness benchmarks are limited, as they either rely on synthetic data or ignore the effects of individual nuisance factors. We introduce OOD-CV, a benchmark dataset that includes out-of-distribution examples of 10 object categories in terms of pose, shape, texture, context and the weather conditions, and enables benchmarking models for image classification, object detection, and 3D pose estimation. In addition to this novel dataset, we contribute extensive experiments using popular baseline methods, which reveal that: 1. Some nuisance factors have a much stronger negative effect on the performance compared to others, also depending on the vision task. 2. Current approaches to enhance robustness have only marginal effects, and can even reduce robustness. 3. We do not observe significant differences between convolutional and transformer architectures. We believe our dataset provides a rich test bed to study robustness and will help push forward research in this area.

Variants: OOD-CV

Associated Benchmarks

This dataset is used in 1 benchmark:

Recent Benchmark Submissions

Task Model Paper Date
Unsupervised Domain Adaptation UGT A Bayesian Approach to OOD … 2024-03-12
Unsupervised Domain Adaptation 3DUDA Source-Free and Image-Only Unsupervised Domain … 2024-01-19

Research Papers

Recent papers with results on this dataset: