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SuperFlux: Flux Super Detailer ft. Flux Upscaler, Florence2 and Flux Lora Workflow
A novel workflow for Flux image generation called SuperFlux. This method aims to overcome the slow iteration and lack of detail often associated with traditional Flux workflows.
Key Problems with Traditional Flux:
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Slow Iteration: Rendering all steps in one go takes significant time, hindering rapid experimentation with prompts and settings.
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Lack of Detail: The resulting images often lack fine details, especially noticeable in areas like faces, textures, and complex objects.
Solution:
This Workflow utilizes three key elements to address these issues:
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Cascaded K-Samplers: The workflow employs three K-Samplers in sequence, each rendering a portion of the total steps. This allows for quick previewing of the composition in the initial sampler and progressive refinement of details in subsequent samplers.
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"If you render in the advanced sampler the first 10 steps... you will be surprised that this gives you an unfinished image... but you will be super surprised if you realize that if you render 10 steps from 0 to 10 out of a total of 10 steps you actually get a finished image"
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Optional Upscaling: Between the second and third samplers, an optional step involves decoding the latent image, upscaling it using a model like "4X real web photo," and then re-encoding it back to the latent space. This further enhances image details.
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Targeted Step Ranges: By rendering specific step ranges in each sampler (e.g., 0-10, 10-20, 20-30), SuperFlux maximizes detail generation while maintaining consistency in the overall composition.
Benefits of This Workflow:
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Faster Iteration: Initial sampler provides a quick preview of the composition, allowing for rapid adjustments to prompts and settings.
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Enhanced Detail: Cascaded samplers and optional upscaling significantly improve the level of detail in the final image, especially noticeable in facial features, textures, and object definition.
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Improved Image Quality: The resulting images exhibit a more natural and refined appearance compared to traditional Flux, with less noticeable artifacts like "turkey skin."
Conclusion:
This Workflow offers a significant improvement over traditional Flux workflows, providing faster iteration and significantly enhanced detail in the generated images. The cascaded sampler approach with optional upscaling proves to be a powerful technique for achieving higher quality results in Flux image generation.
描述:
Version 1.0
训练词语:
名称: fluxSuperDetailerFtFlux_v10.zip
大小 (KB): 4
类型: Archive
Pickle 扫描结果: Success
Pickle 扫描信息: No Pickle imports
病毒扫描结果: Success