G2DeNet: Global Gaussian Distribution Embedding Network and Its Application to Visual Recognition

Qilong Wang, P. Li, Lei Zhang
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引用次数: 99

Abstract

Recently, plugging trainable structural layers into deep convolutional neural networks (CNNs) as image representations has made promising progress. However, there has been little work on inserting parametric probability distributions, which can effectively model feature statistics, into deep CNNs in an end-to-end manner. This paper proposes a Global Gaussian Distribution embedding Network (G2DeNet) to take a step towards addressing this problem. The core of G2DeNet is a novel trainable layer of a global Gaussian as an image representation plugged into deep CNNs for end-to-end learning. The challenge is that the proposed layer involves Gaussian distributions whose space is not a linear space, which makes its forward and backward propagations be non-intuitive and non-trivial. To tackle this issue, we employ a Gaussian embedding strategy which respects the structures of both Riemannian manifold and smooth group of Gaussians. Based on this strategy, we construct the proposed global Gaussian embedding layer and decompose it into two sub-layers: the matrix partition sub-layer decoupling the mean vector and covariance matrix entangled in the embedding matrix, and the square-rooted, symmetric positive definite matrix sub-layer. In this way, we can derive the partial derivatives associated with the proposed structural layer and thus allow backpropagation of gradients. Experimental results on large scale region classification and fine-grained recognition tasks show that G2DeNet is superior to its counterparts, capable of achieving state-of-the-art performance.
G2DeNet:全局高斯分布嵌入网络及其在视觉识别中的应用
最近,将可训练结构层插入深度卷积神经网络(cnn)作为图像表示已经取得了可喜的进展。然而,在以端到端方式将参数概率分布(能够有效地对特征统计进行建模)插入深度cnn中,很少有研究。本文提出了一种全局高斯分布嵌入网络(G2DeNet)来解决这个问题。G2DeNet的核心是一个新颖的全局高斯可训练层,作为嵌入深度cnn的图像表示,用于端到端学习。挑战在于所提出的层涉及高斯分布,其空间不是线性空间,这使得其向前和向后传播是非直观和非平凡的。为了解决这个问题,我们采用了一种高斯嵌入策略,该策略既尊重黎曼流形的结构,也尊重光滑高斯群的结构。基于此策略,我们构造了所提出的全局高斯嵌入层,并将其分解为两个子层:解耦嵌入矩阵中均值向量和协方差矩阵的矩阵划分子层和平方根对称正定矩阵子层。通过这种方式,我们可以推导出与所提出的结构层相关的偏导数,从而允许梯度的反向传播。在大尺度区域分类和细粒度识别任务上的实验结果表明,G2DeNet优于同类算法,能够达到最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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