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license: mit |
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language: |
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- en |
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# Visually Guided Generative Text-Layout Pre-training for Document Intelligence |
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The ViTLP model was proposed in [Visually Guided Generative Text-Layout Pre-training for Document Intelligence](https://arxiv.org/abs/2403.16516), which is a generative foundation model for document intelligence. We provide the pre-trained checkpoint *ViTLP-medium* (380M). The pre-trained ViTLP model can natively perform OCR text localization and recognition. |
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## Demo on Document Text Recognition & Localization |
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The code of ViTLP inference and demo is assisible at [https://github.com/Veason-silverbullet/ViTLP](https://github.com/Veason-silverbullet/ViTLP). |
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# Preset FAQ |
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- Why is ViTLP-medium (380M)? |
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When I commenced this project, it was on the eve of LLMs (precisely speaking, ChatGPT). ViTLP-base presented in our paper, is actually a rather small pre-trained model. We know it is expected to scale up ViTLP in this LLM era. However, the pre-training scale is commonly constrained by computation resources and the pre-training dataset scale, in which context ViTLP-medium (380M) is the largest pre-training scale so far we can support. |
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Besides, this scale of ViTLP also brings inference sweetness including speed and memory usage. Typically, OCR on a page of a document image can be processed within 5~10 seconds in an Nvidia 4090, which is comparable to (and faster than) most OCR engines (and LLMs). |
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# Note |
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ViTLP is pronounced /ˈvai·tlp/ (vital). The first version of our paper was submitted to [OpenReview](https://openreview.net/forum?id=ARtBIBAmNR) in June 2023. |