Assessing Neural Network Robustness via Adversarial Pivotal Tuning

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The robustness of image classifiers is essential to their deployment in the real world. The ability to assess this resilience to manipulations or deviations from the training data is thus crucial. These modifications have traditionally consisted of minimal changes that still manage to fool classifiers, and modern approaches are increasingly robust to them. Semantic manipulations that modify elements of an image in meaningful ways have thus gained traction for this purpose. However, they have primarily been limited to style, color, or attribute changes. While expressive, these manipulations do not make use of the full capabilities of a pretrained generative model. In this work, we aim to bridge this gap. We show how a pretrained image generator can be used to semantically manipulate images in a detailed, diverse, and photorealistic way while still preserving the class of the original image. Inspired by recent GAN-based image inversion methods, we propose a method called Adversarial Pivotal Tuning (APT). Given an image, APT first finds a pivot latent space input that reconstructs the image using a pretrained generator. It then adjusts the generator's weights to create small yet semantic manipulations in order to fool a pretrained classifier. APT preserves the full expressive editing capabilities of the generative model. We demonstrate that APT is capable of a wide range of class-preserving semantic image manipulations that fool a variety of pretrained classifiers. Finally, we show that classifiers that are robust to other benchmarks are not robust to APT manipulations and suggest a method to improve them.
Original languageEnglish
Title of host publicationProceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)
PublisherIEEE
Publication date2024
Pages2952-2961
Publication statusPublished - 2024
EventWACV 2024 - IEEE/CVF Winter Conference on Applications of Computer Vision - Waikola, Hawaii, United States
Duration: 4 Jan 20248 Jan 2024

Conference

ConferenceWACV 2024 - IEEE/CVF Winter Conference on Applications of Computer Vision
LandUnited States
ByWaikola, Hawaii
Periode04/01/202408/01/2024

ID: 383746154