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Which of the following is NOT a feedback given to the generator during training?This is a genuine imageThis image looks like a carThis image looks blurryThis is a fake imageThis image is pixelated

Question

Which of the following is NOT a feedback given to the generator during training?This is a genuine imageThis image looks like a carThis image looks blurryThis is a fake imageThis image is pixelated

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Solution

"This image looks like a car" is NOT a feedback given to the generator during training.

The generator in a Generative Adversarial Network (GAN) is trained to produce images that are indistinguishable from real images. The feedback it receives is typically binary, indicating whether the generated image was able to fool the discriminator or not. It doesn't receive feedback about specific content of the image (like whether the image looks like a car) or the quality of the image (like whether the image is blurry or pixelated). The goal is simply to generate images that are classified as real by the discriminator.

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