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arxiv: 2504.00051 · v1 · pith:6SCWA2CInew · submitted 2025-03-31 · 💻 cs.LG · cs.AI· cs.CL

The Cursive Transformer

classification 💻 cs.LG cs.AIcs.CL
keywords coordinatescursivedatageneratehandwritingmodelsequencesstroke
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Transformers trained on tokenized text, audio, and images can generate high-quality autoregressive samples. But handwriting data, represented as sequences of pen coordinates, remains underexplored. We introduce a novel tokenization scheme that converts pen stroke offsets to polar coordinates, discretizes them into bins, and then turns them into sequences of tokens with which to train a standard GPT model. This allows us to capture complex stroke distributions without using any specialized architectures (eg. the mixture density network or the self-advancing ASCII attention head from Graves 2014). With just 3,500 handwritten words and a few simple data augmentations, we are able to train a model that can generate realistic cursive handwriting. Our approach is simpler and more performant than previous RNN-based methods.

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