Rishit-dagli/MIRNet-TFJS
TensorFlow JS models for MIRNet for low-lightš” image enhancement
This project helps photographers, content creators, or anyone with a collection of dimly lit images to instantly brighten and clarify them. You simply provide a low-light photograph, and it outputs a significantly enhanced, clearer version. It's designed for individuals who need to improve the visual quality of their images without complex editing software.
356 stars. No commits in the last 6 months.
Use this if you need a straightforward way to enhance underexposed or dark photos, making details more visible and improving overall image quality.
Not ideal if you require precise, granular control over specific image elements like color grading, selective sharpening, or advanced retouching.
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Jupyter Notebook
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Apache-2.0
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Last pushed
Mar 05, 2023
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