细胞神经网络对低强度对抗性攻击的弹性研究

A. Horváth
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引用次数: 0

摘要

深度神经网络广泛应用于各种任务中,并解决了许多实际问题。这些方法通常产生足够高的准确性,但这些方法在关键应用中的稳健性仍在研究中。对抗性攻击,其中轻微的扰动可能导致错误分类构成最重大的挑战之一。在卷积神经网络的情况下,正在进行的研究是创建更有弹性的网络来应对这些攻击。在本文中,我将证明多层细胞神经网络在其本质上比卷积神经网络对低强度攻击更具鲁棒性和弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On The Resilience of Cellular Neural Networks to Low-intensity Adversarial Attacks
Deep Neural networks are commonly used in various tasks and enabled the solution of many practical problems. These approaches usually result sufficiently high accuracy, but the robustness of these methods in critical applications is still under investigation. Adversarial attacks, in which minor perturbations can cause misclassification pose one of the most significant challenges. In case of convolutional neural networks there is ongoing research to create more resilient networks towards these attacks. In this paper I will demonstrate that multi-layered cellular neural networks in their nature are more robust and resilient to low-intensity attacks than their convolutional counterparts.
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