Submitted by manli29 t3_yb851q in deeplearning
beingsubmitted t1_itht9o5 wrote
I don't see how you would train them that way - you can't use the output of a discriminator as the input of a generator - that wouldn't get you what you want. You could train them in parallel, one network and discriminator doing only b&w restoration, and the other doing only colorization.
The way images work and the eye (part of the science behind why jpeg is so useful) is that we're much more sensitive to luminance information than color information. You could take the output of colorized image in hsl color space and replace the luminance with that of the generated restored photo. Doing it this way, you could force the separation of two generators using only one discriminator, as well - one generator only affecting the hue and saturation of the final image, and the other only affecting the luminance.
That said, with the more recent breakthroughs, it seems that networks are proving more successful as generalists than specialists. For example, it's believed that whisper performs better on each language because it's trained on all languages, as counter-intuitive as it may seem.
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