santoshpanda1995/LightweightGCN-Model
A very fast and lightweight model based on graph convolutional network (GCN) for Low Light Image Enhancement (LLIE)
This project helps quickly brighten and clarify dark or underexposed images. You input a low-light image, and it outputs a significantly enhanced, clearer version. It's designed for anyone working with digital images in dim conditions, such as surveillance operators, photographers, or industrial inspectors who need real-time visual clarity.
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Use this if you need to enhance low-light images very quickly for applications where speed is crucial, like live video feeds or automated inspection systems.
Not ideal if you require extremely high-fidelity, artistic image restoration where processing time is not a primary concern and larger, more complex models could be used.
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MIT
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Last pushed
Jul 23, 2025
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