2022
DOI: 10.4204/eptcs.361.8
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Work In Progress: Safety and Robustness Verification of Autoencoder-Based Regression Models using the NNV Tool

Abstract: This work in progress paper introduces robustness verification for autoencoder-based regression neural network (NN) models, following state-of-the-art approaches for robustness verification of image classification NNs. Despite the ongoing progress in developing verification methods for safety and robustness in various deep neural networks (DNNs), robustness checking of autoencoder models has not yet been considered. We explore this open space of research and check ways to bridge the gap between existing DNN ve… Show more

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