2023
DOI: 10.3390/app13074599
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Automated Segmentation to Make Hidden Trigger Backdoor Attacks Robust against Deep Neural Networks

Abstract: The successful outcomes of deep learning (DL) algorithms in diverse fields have prompted researchers to consider backdoor attacks on DL models to defend them in practical applications. Adversarial examples could deceive a safety-critical system, which could lead to hazardous situations. To cope with this, we suggested a segmentation technique that makes hidden trigger backdoor attacks more robust. The tiny trigger patterns are conventionally established by a series of parameters encompassing their DNN size, lo… Show more

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