Robust Deep Convolutional Neural Network inspired by the Primary Visual Cortex

Zhanguo Dong, Ming Ke, Jiarong Wang, Lubin Wang, Gang Wang
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Abstract

Most of the current advanced object recognition deep convolutional neural networks (DCNNs) are vulnerable to attacks of adversarial perturbations. In comparison, the primate vision system can effectively suppress the inference of adversarial perturbations. Many studies have shown that the fusion of biological vision mechanisms and DCNNs is a promising way to improve model robustness. The primary visual cortex (V1) is a key brain region for visual information processing in the biological brain, containing various simple cell orientation selection receptive fields, which can specifically respond to low-level features. Therefore, we have developed an object classification DCNN model inspired by V1 orientation selection receptive fields. The V1-inspired model introduces V1 orientation selection receptive fields into DCNN through anisotropic Gaussian kernels, which can enrich the receptive fields of DCNN. In the white-box adversarial attack experiments on CIFAR-100 and Mini-ImageNet, the adversarial robustness of our model is 21.74% and 20.01% higher than that of the baseline DCNN, respectively. Compared with the SOAT VOneNet, the adversarial robustness of our model improves by 2.88% and 8.56%, respectively. It is worth pointing out that our method will not increase the parameter quantity of the baseline model, while the extra training cost is very little.
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受初级视觉皮层启发的鲁棒深度卷积神经网络
目前大多数先进的目标识别深度卷积神经网络(DCNNs)都容易受到对抗性扰动的攻击。相比之下,灵长类视觉系统可以有效地抑制对抗性扰动的推理。许多研究表明,生物视觉机制与DCNNs的融合是提高模型鲁棒性的一种很有前途的方法。初级视觉皮层(primary visual cortex, V1)是生物脑中处理视觉信息的关键脑区,包含多种简单的细胞定向选择感受野,对低水平特征具有特异性反应。因此,我们开发了一个基于V1方向选择接受野的目标分类DCNN模型。V1启发模型通过各向异性高斯核将V1取向选择感受场引入DCNN,丰富了DCNN的感受场。在CIFAR-100和Mini-ImageNet的白盒对抗攻击实验中,我们的模型的对抗鲁棒性分别比基线DCNN高21.74%和20.01%。与SOAT VOneNet相比,该模型的对抗鲁棒性分别提高了2.88%和8.56%。值得指出的是,我们的方法不会增加基线模型的参数数量,而额外的训练成本也很少。
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