2022
DOI: 10.20944/preprints202202.0058.v1
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Are Deep Models Robust against Real Distortions? A Case Study on Document Image Classification

Abstract: Deep neural networks have been extensively researched in the field of document image classification to improve classification performance and have shown excellent results. However, there is little research in this area that addresses the question of how well these models would perform in a real-world environment, where the data the models are confronted with often exhibits various types of noise or distortion. In this work, we present two separate benchmark datasets, namely RVL-CDIP-D and Tobacco3482-D, to eva… Show more

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