卷积神经网络的核池化

Yin Cui, Feng Zhou, Jiang Wang, Xiao Liu, Yuanqing Lin, Serge J. Belongie
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引用次数: 278

摘要

具有双线性池的卷积神经网络(cnn),最初是完整的形式,后来使用紧凑的表示,在广泛的视觉任务上取得了令人印象深刻的性能提升,包括细粒度视觉分类、视觉问答、人脸识别以及纹理和风格描述。其成功的关键在于对两两(二阶)特征相互作用的空间不变建模。在这项工作中,我们提出了一个通用的池化框架,以核的形式捕获特征的高阶相互作用。我们演示了如何以无参数的方式使用紧凑的显式特征映射来近似高斯RBF等核函数到给定的阶数。结合cnn,可以通过误差反向传播以端到端的方式从数据中学习内核的组成。从核逼近误差和视觉识别精度两方面对所提出的核池化方案进行了评价。实验评估证明了在常用的细粒度识别数据集上的最先进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel Pooling for Convolutional Neural Networks
Convolutional Neural Networks (CNNs) with Bilinear Pooling, initially in their full form and later using compact representations, have yielded impressive performance gains on a wide range of visual tasks, including fine-grained visual categorization, visual question answering, face recognition, and description of texture and style. The key to their success lies in the spatially invariant modeling of pairwise (2nd order) feature interactions. In this work, we propose a general pooling framework that captures higher order interactions of features in the form of kernels. We demonstrate how to approximate kernels such as Gaussian RBF up to a given order using compact explicit feature maps in a parameter-free manner. Combined with CNNs, the composition of the kernel can be learned from data in an end-to-end fashion via error back-propagation. The proposed kernel pooling scheme is evaluated in terms of both kernel approximation error and visual recognition accuracy. Experimental evaluations demonstrate state-of-the-art performance on commonly used fine-grained recognition datasets.
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