稳健性(进化)
计算机科学
人工智能
机器学习
卷积神经网络
深度学习
生物化学
基因
化学
作者
Badr Youbi Idrissi,Diane Bouchacourt,Randall Balestriero,Ivan Evtimov,Caner Hazırbaş,Nicolas Ballas,P. Vincent,Michal Drozdzal,David López-Paz,Mark Ibrahim
出处
期刊:Cornell University - arXiv
日期:2022-01-01
被引量:10
标识
DOI:10.48550/arxiv.2211.01866
摘要
Deep learning vision systems are widely deployed across applications where reliability is critical. However, even today's best models can fail to recognize an object when its pose, lighting, or background varies. While existing benchmarks surface examples challenging for models, they do not explain why such mistakes arise. To address this need, we introduce ImageNet-X, a set of sixteen human annotations of factors such as pose, background, or lighting the entire ImageNet-1k validation set as well as a random subset of 12k training images. Equipped with ImageNet-X, we investigate 2,200 current recognition models and study the types of mistakes as a function of model's (1) architecture, e.g. transformer vs. convolutional, (2) learning paradigm, e.g. supervised vs. self-supervised, and (3) training procedures, e.g., data augmentation. Regardless of these choices, we find models have consistent failure modes across ImageNet-X categories. We also find that while data augmentation can improve robustness to certain factors, they induce spill-over effects to other factors. For example, strong random cropping hurts robustness on smaller objects. Together, these insights suggest to advance the robustness of modern vision models, future research should focus on collecting additional data and understanding data augmentation schemes. Along with these insights, we release a toolkit based on ImageNet-X to spur further study into the mistakes image recognition systems make.
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