2022
DOI: 10.1007/978-3-031-20074-8_35
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Trapped in Texture Bias? A Large Scale Comparison of Deep Instance Segmentation

Abstract: Do deep learning models for instance segmentation generalize to novel objects in a systematic way? For classification, such behavior has been questioned. In this study, we aim to understand if certain design decisions such as framework, architecture or pre-training contribute to the semantic understanding of instance segmentation. To answer this question, we consider a special case of robustness and compare pretrained models on a challenging benchmark for object-centric, out-ofdistribution texture. We do not i… Show more

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References 57 publications
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