Kernel Support Vector Machines and Convolutional Neural Networks

Shihao Jiang, R. Hartley, Basura Fernando
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引用次数: 4

Abstract

Convolutional Neural Networks (CNN) have achieved great success in various computer vision tasks due to their strong ability in feature extraction. The trend of development of CNN architectures is to increase their depth so as to increase their feature extraction ability. Kernel Support Vector Machines (SVM), on the other hand, are known to give optimal separating surfaces by their ability to automatically select support vectors and perform classification in higher dimensional spaces. We investigate the idea of combining the two such that best of both worlds can be achieved and a more compact model can perform as well as deeper CNNs. In the past, attempts have been made to use CNNs to extract features from images and then classify with a kernel SVM, but this process was performed in two separate steps. In this paper, we propose one single model where a CNN and a kernel SVM are integrated together and can be trained end-to-end. In particular, we propose a fully-differentiable Radial Basis Function (RBF) layer, where it can be seamless adapted to a CNN environment and forms a better classifier compared to the normal linear classifier. Due to end-to-end training, our approach allows the initial layers of the CNN to extract features more adapted to the kernel SVM classifier. Our experiments demonstrate that the hybrid CNN-kSVM model gives superior results to a plain CNN model, and also performs better than the method where feature extraction and classification are performed in separate stages, by a CNN and a kernel SVM respectively.
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核支持向量机与卷积神经网络
卷积神经网络(CNN)由于其强大的特征提取能力,在各种计算机视觉任务中取得了巨大的成功。CNN架构的发展趋势是增加其深度,从而提高其特征提取能力。另一方面,已知核支持向量机(SVM)通过其自动选择支持向量并在高维空间中执行分类的能力来给出最佳分离表面。我们研究了将两者结合起来的想法,这样可以实现两全其美,并且更紧凑的模型可以像更深入的cnn一样表现良好。在过去,已经有人尝试使用cnn从图像中提取特征,然后使用核支持向量机进行分类,但是这个过程分两个单独的步骤进行。在本文中,我们提出了一个单一的模型,其中CNN和核支持向量机集成在一起,可以端到端训练。特别是,我们提出了一个完全可微的径向基函数(RBF)层,它可以无缝地适应CNN环境,与常规线性分类器相比,形成更好的分类器。由于端到端训练,我们的方法允许CNN的初始层提取更适合核SVM分类器的特征。我们的实验表明,混合CNN- ksvm模型的结果优于普通CNN模型,并且也优于分别由CNN和核SVM分阶段进行特征提取和分类的方法。
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