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Robust Handwriting Recognition with Limited and Noisy Data

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arxiv 2008.08148 v1 pith:2FGDQHBI submitted 2020-08-18 cs.CV cs.LG

Robust Handwriting Recognition with Limited and Noisy Data

classification cs.CV cs.LG
keywords recognitiondatahandwritingnoisywordfocuslearninglimited
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Despite the advent of deep learning in computer vision, the general handwriting recognition problem is far from solved. Most existing approaches focus on handwriting datasets that have clearly written text and carefully segmented labels. In this paper, we instead focus on learning handwritten characters from maintenance logs, a constrained setting where data is very limited and noisy. We break the problem into two consecutive stages of word segmentation and word recognition respectively and utilize data augmentation techniques to train both stages. Extensive comparisons with popular baselines for scene-text detection and word recognition show that our system achieves a lower error rate and is more suited to handle noisy and difficult documents

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