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基于成对差异池化的双线性卷积神经网络的纹理分类

Texture Classification Using Pair-wise Difference Pooling Based Bilinear Convolutional Neural Networks.

作者信息

Dong Xinghui, Zhou Huiyu, Dong Junyu

出版信息

IEEE Trans Image Process. 2020 Aug 31;PP. doi: 10.1109/TIP.2020.3019185.

Abstract

Texture is normally represented by aggregating local features based on the assumption of spatial homogeneity. Effective texture features are always the research focus even though both hand-crafted and deep learning approaches have been extensively investigated. Motivated by the success of Bilinear Convolutional Neural Networks (BCNNs) in fine-grained image recognition, we propose to incorporate the BCNN with the Pair-wise Difference Pooling (i.e. BCNN-PDP) for texture classification. The BCNN-PDP is built on top of a set of feature maps extracted at a convolutional layer of the pre-trained CNN. Compared with the outer product used by the original BCNN feature set, the pair-wise difference not only captures the pair-wise relationship between two sets of features but also encodes the difference between each pair of features. Considering the importance of the gradient data to the representation of image structures, we further generalise the BCNN-PDP feature set to two sets of feature maps computed from the original image and its gradient magnitude map respectively, i.e. the Fused BCNN-PDP (F-BCNN-PDP) feature set. In addition, the BCNN-PDP can be applied to two different CNNs and is referred to as the Asymmetric BCNN-PDP (A-BCNN-PDP). The three PDP-based BCNN feature sets can also be extracted at multiple scales. Since the dimensionality of the BCNN feature vectors is very high, we propose a new yet simple Block-wise PCA (BPCA) method in order to derive more compact feature vectors. The proposed methods are tested on seven different datasets along with 21 baseline feature sets. The results show that the proposed feature sets are superior, or at least comparable, to their counterparts across different datasets.

摘要

纹理通常是基于空间同质性的假设,通过聚合局部特征来表示。尽管手工制作和深度学习方法都已得到广泛研究,但有效的纹理特征一直是研究的重点。受双线性卷积神经网络(BCNNs)在细粒度图像识别中取得成功的启发,我们提出将BCNN与成对差异池化相结合(即BCNN-PDP)用于纹理分类。BCNN-PDP建立在预训练CNN卷积层提取的一组特征图之上。与原始BCNN特征集使用的外积相比,成对差异不仅捕获了两组特征之间的成对关系,还对每对特征之间的差异进行了编码。考虑到梯度数据对图像结构表示的重要性,我们进一步将BCNN-PDP特征集推广到分别从原始图像及其梯度幅值图计算得到的两组特征图,即融合BCNN-PDP(F-BCNN-PDP)特征集。此外,BCNN-PDP可以应用于两种不同的CNN,称为非对称BCNN-PDP(A-BCNN-PDP)。基于PDP的三种BCNN特征集也可以在多个尺度上提取。由于BCNN特征向量的维度非常高,我们提出了一种新的但简单的逐块主成分分析(BPCA)方法,以得到更紧凑的特征向量。我们在七个不同的数据集以及21个基线特征集上对所提出的方法进行了测试。结果表明,所提出的特征集在不同数据集上优于或至少与它们的对应物相当。

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