Create README.md
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README.md
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---
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license: other
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datasets:
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- laion/conceptual-captions-12m-webdataset
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- CaptionEmporium/coyo-hd-11m-llavanext
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- KBlueLeaf/danbooru2023-metadata-database
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- graph-based-captions/GBC10M
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language:
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- en
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pipeline_tag: text-generation
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library_name: transformers
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---
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# TIPO: Text to Image with text presampling for Prompt Optimization
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200M LLaMA arch model trained for TIPO.
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## Introduction
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In this project, we introduce "TIPO" (**T**ext to **I**mage with text presampling for **P**rompt **O**ptimization), an innovative framework designed to significantly enhance the quality and usability of Text-to-Image (T2I) generative models. TIPO utilizes the Large Language Models (LLMs) to perform "Text Presampling" within the inference pipeline of text-to-image generative modeling. By refining and extending user input prompts, TIPO enables generative models to produce superior results with minimal user effort, making T2I systems more accessible and effective for a wider range of users.
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## Usage
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Use updated version of DTG extension (renamed to z-tipo-ext), current version of z-tipo-ext support stable-diffusion-webui, stable-diffusion-webui-forge and ComfyUI. SD-Next haven't been tested.
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## Metric
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We have tested TIPO in several metric:
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#### 1. Aesthetic Score (Higher is Better)
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We compute the Aesthetic Score using the **Aesthetic Predictor V2.5**. This metric is calculated on the short/truncated long test.
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*Figure 1: Aesthetic Score distribution.*
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#### 2. AI Corrupt Score (Higher is Better)
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The AI Corrupt Score is obtained from the **AICorruptMetrics** in **sdeval**.
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This metric is calculated on the short/truncated long test.
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*Figure 2: AI Corrupt Score distribution.*
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#### 3. Frechet Dino Distance (FDD) on Scenery Tag Test
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We use FDD on the Scenery Tag Test to demonstrate that when input prompts address a smaller distribution, the model struggles to generate images that reflect the true distribution. However, with **TIPO**, this issue is mitigated.
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| FDD Model | `<meta> scenery` only | `<meta> scenery` + TIPO |
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|------------------|-----------------------|-------------------------|
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| DinoV2 ViT-S | 0.1917 | **0.1786** |
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| DinoV2 ViT-B | 0.2002 | **0.1755** |
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| DinoV2 ViT-L | 0.2017 | **0.1863** |
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| DinoV2 ViT-G | 0.2359 | **0.2096** |
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*Table 1: Frechet Dino Distance (FDD) on Scenery Tag Test.*
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## LICENSE
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This model is released under [Kohaku License 1.0](https://kblueleaf.net/documents/kohaku-license/?[Your%20Organization/Name]=KohakuBlueLeaf&[Year]=2024)<br>
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You can check the above provided URL or check the LICENSE file in this repo.
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