2021
DOI: 10.48550/arxiv.2110.07040
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Data Incubation -- Synthesizing Missing Data for Handwriting Recognition

Abstract: In this paper, we demonstrate how a generative model can be used to build a better recognizer through the control of content and style. We are building an online handwriting recognizer from a modest amount of training samples. By training our controllable handwriting synthesizer on the same data, we can synthesize handwriting with previously underrepresented content (e.g., URLs and email addresses) and style (e.g., cursive and slanted). Moreover, we propose a framework to analyze a recognizer that is trained w… Show more

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