Skip to yearly menu bar Skip to main content


Oral
in
Workshop: Shift happens: Crowdsourcing metrics and test datasets beyond ImageNet

ImageNet-Cartoon and ImageNet-Drawing: two domain shift datasets for ImageNet

Tiago Salvador · Adam Oberman


Abstract:

Benchmarking the robustness to distribution shifts traditionally relies on dataset collection which is typically laborious and expensive, in particular for datasets with a large number of classes like ImageNet. An exception to this procedure is ImageNet-C (Hendrycks & Dietterich, 2019), a dataset created by applying common real-world corruptions at different levels of intensity to the (clean) ImageNet images. Inspired by this work, we introduce ImageNet-Cartoon and ImageNet-Drawing, two datasets constructed by converting ImageNet images into cartoons and colored pencil drawings, using a GAN framework (Wang & Yu, 2020) and simple image processing (Lu et al., 2012), respectively.

Chat is not available.