DarylFernandes99 / Low-light-Image-Enhancement-using-GANLinks
A GAN-based system that transforms dark, poorly lit images into well-illuminated versions. Using a custom encoder-decoder architecture, it enhances brightness and contrast while preserving image details. Effective across various low-light conditions, this model improves visibility for photography, surveillance, and mobile applications.
☆12Updated 5 months ago
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