LAION-C: An Out-of-Distribution Benchmark for Web-Scale Vision Models
LAION-C: An Out-of-Distribution Benchmark for Web-Scale Vision Models
Out-of-distribution (OOD) robustness is a desired property of computer vision models. Improving model robustness requires high-quality signals from robustness benchmarks to quantify progress. While various benchmark datasets such as ImageNet-C were proposed in the ImageNet era, most ImageNet-C corruption types are no longer OOD relative to today's large, web-scraped datasets, which already contain common corruptions such as blur or JPEG compression artifacts. Consequently, these benchmarks are no longer well-suited for evaluating OOD robustness in the era of web-scale datasets. Indeed, recent models show saturating scores on ImageNet-era OOD benchmarks, indicating that it is unclear whether models trained on web-scale datasets truly become better at OOD generalization or whether they have simply been exposed to the test distortions during training. To address this, we introduce LAION-C as a benchmark alternative for ImageNet-C. LAION-C consists of six novel distortion types specifically designed to be OOD, even for web-scale datasets such as LAION. In a comprehensive evaluation of state-of-the-art models, we find that the LAION-C dataset poses significant challenges to contemporary models, including MLLMs such as Gemini and GPT-4o. We additionally conducted a psychophysical experiment to evaluate the difficulty of our corruptions for human observers, enabling a comparison of models to lab-quality human robustness data. We observe a paradigm shift in OOD generalization: from humans outperforming models, to the best models now matching or outperforming the best human observers.
Fanfei Li、Thomas Klein、Wieland Brendel、Robert Geirhos、Roland S. Zimmermann
计算技术、计算机技术自然科学研究方法
Fanfei Li,Thomas Klein,Wieland Brendel,Robert Geirhos,Roland S. Zimmermann.LAION-C: An Out-of-Distribution Benchmark for Web-Scale Vision Models[EB/OL].(2025-06-20)[2025-07-16].https://arxiv.org/abs/2506.16950.点此复制
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