CVAILGMMMLNov 27, 2022

Traditional Classification Neural Networks are Good Generators: They are Competitive with DDPMs and GANs

arXiv:2211.14794v211 citationsh-index: 117
Originality Highly original
AI Analysis

This work has far-reaching implications for making image generation more accessible and interpretable, as it leverages widely available classifiers that are easier to train than generative models.

The paper tackles the problem of generating high-quality images using traditional neural network classifiers instead of specialized generative models, achieving results comparable to state-of-the-art methods like DDPMs and GANs on ImageNet at 256x256 resolution.

Classifiers and generators have long been separated. We break down this separation and showcase that conventional neural network classifiers can generate high-quality images of a large number of categories, being comparable to the state-of-the-art generative models (e.g., DDPMs and GANs). We achieve this by computing the partial derivative of the classification loss function with respect to the input to optimize the input to produce an image. Since it is widely known that directly optimizing the inputs is similar to targeted adversarial attacks incapable of generating human-meaningful images, we propose a mask-based stochastic reconstruction module to make the gradients semantic-aware to synthesize plausible images. We further propose a progressive-resolution technique to guarantee fidelity, which produces photorealistic images. Furthermore, we introduce a distance metric loss and a non-trivial distribution loss to ensure classification neural networks can synthesize diverse and high-fidelity images. Using traditional neural network classifiers, we can generate good-quality images of 256$\times$256 resolution on ImageNet. Intriguingly, our method is also applicable to text-to-image generation by regarding image-text foundation models as generalized classifiers. Proving that classifiers have learned the data distribution and are ready for image generation has far-reaching implications, for classifiers are much easier to train than generative models like DDPMs and GANs. We don't even need to train classification models because tons of public ones are available for download. Also, this holds great potential for the interpretability and robustness of classifiers. Project page is at \url{https://classifier-as-generator.github.io/}.

Foundations

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