BIGRoC: Boosting Image Generation via a Robust Classifier
Roy Ganz, Michael Elad

TL;DR
BIGRoC is a post-processing technique that enhances image quality and fidelity from any generative model using a robust classifier, achieving significant improvements without retraining the original model.
Contribution
We introduce BIGRoC, a model-agnostic post-processing method that refines generated images via a robust classifier, outperforming existing refinement approaches.
Findings
Significant FID score improvements on CIFAR-10 and ImageNet.
Outperforms competitive refinement methods despite less information.
Humans prefer images processed with BIGRoC.
Abstract
The interest of the machine learning community in image synthesis has grown significantly in recent years, with the introduction of a wide range of deep generative models and means for training them. In this work, we propose a general model-agnostic technique for improving the image quality and the distribution fidelity of generated images obtained by any generative model. Our method, termed BIGRoC (Boosting Image Generation via a Robust Classifier), is based on a post-processing procedure via the guidance of a given robust classifier and without a need for additional training of the generative model. Given a synthesized image, we propose to update it through projected gradient steps over the robust classifier to refine its recognition. We demonstrate this post-processing algorithm on various image synthesis methods and show a significant quantitative and qualitative improvement on…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Cell Image Analysis Techniques · Advanced Image and Video Retrieval Techniques
