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Model Stitching and Visualization How GAN Generators can Invert Networks in Real-Time

Asian Conference on Machine Learning (ACML), 2023
Main:13 Pages
12 Figures
5 Tables
Appendix:3 Pages
Abstract

In this work, we propose a fast and accurate method to reconstruct activations of classification and semantic segmentation networks by stitching them with a GAN generator utilizing a 1x1 convolution. We test our approach on images of animals from the AFHQ wild dataset, ImageNet1K, and real-world digital pathology scans of stained tissue samples. Our results show comparable performance to established gradient descent methods but with a processing time that is two orders of magnitude faster, making this approach promising for practical applications.

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