论文标题
将深度特征空间朝向高斯混合物进行视觉分类
Shaping Deep Feature Space towards Gaussian Mixture for Visual Classification
论文作者
论文摘要
SoftMax跨凝性损失函数已被广泛用于训练深层模型以完成各种任务。在这项工作中,我们提出了深层神经网络的高斯混合物(GM)损失函数,以进行视觉分类。与SoftMax跨透镜损失不同,我们的方法显式地塑造了高斯混合物分布的深度特征空间。凭借分类的边缘和可能性正则化,GM损失既有促进了高分类性能和特征分布的准确建模。基于输入的特征分布与训练集之间的差异,可以很容易地使用GM损失来区分异常输入,例如对抗性示例。此外,理论分析表明,可以使用GM损失来实现对称特征空间,这使模型能够针对对抗性攻击进行稳健性。提出的模型可以轻松有效地实现,而无需使用额外的可训练参数。广泛的评估表明,所提出的方法不仅在图像分类方面表现出色,而且对在不同威胁模型下强烈攻击产生的对抗性示例的可靠检测。
The softmax cross-entropy loss function has been widely used to train deep models for various tasks. In this work, we propose a Gaussian mixture (GM) loss function for deep neural networks for visual classification. Unlike the softmax cross-entropy loss, our method explicitly shapes the deep feature space towards a Gaussian Mixture distribution. With a classification margin and a likelihood regularization, the GM loss facilitates both high classification performance and accurate modeling of the feature distribution. The GM loss can be readily used to distinguish abnormal inputs, such as the adversarial examples, based on the discrepancy between feature distributions of the inputs and the training set. Furthermore, theoretical analysis shows that a symmetric feature space can be achieved by using the GM loss, which enables the models to perform robustly against adversarial attacks. The proposed model can be implemented easily and efficiently without using extra trainable parameters. Extensive evaluations demonstrate that the proposed method performs favorably not only on image classification but also on robust detection of adversarial examples generated by strong attacks under different threat models.