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Teaching Machines to Code: Neural Markup Generation with Visual Attention

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abstract

We present a neural transducer model with visual attention that learns to generate LaTeX markup of a real-world math formula given its image. Applying sequence modeling and transduction techniques that have been very successful across modalities such as natural language, image, handwriting, speech and audio; we construct an image-to-markup model that learns to produce syntactically and semantically correct LaTeX markup code over 150 words long and achieves a BLEU score of 89%; improving upon the previous state-of-art for the Im2Latex problem. We also demonstrate with heat-map visualization how attention helps in interpreting the model and can pinpoint (detect and localize) symbols on the image accurately despite having been trained without any bounding box data.

fields

cs.LG 1

years

2023 1

verdicts

CONDITIONAL 1

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  • Nougat: Neural Optical Understanding for Academic Documents cs.LG · 2023-08-25 · conditional · none · ref 16 · internal anchor

    Nougat applies a visual transformer to convert academic PDFs into markup language while accurately handling mathematical content on a new scientific document dataset.