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PCA-LDANet: A Simple Feature Learning Method for Image Classification

机译:PCA-LDANet:用于图像分类的简单特征学习方法

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In this paper, we propose a simple and effective feature learning architecture for image classification that is based on very basic data processing components: 1) principal component analysis (PCA); 2) linear discriminant analysis (LDA); and 3) binary hashing and blockwise histograms. In this architecture, the PCA is employed to reconstruct patches of input images, and the LDA is employed to learn filter banks. This is followed by simple binary hashing and blockwise histograms for indexing. This architecture is motivated by LDANet and PCANet, thus called the PCA LDA Network (PCA-LDANet). They have some similarities in their topologies. We have tested the PCA-LDANet on two visual datasets for different tasks, including the Facial Recognition Technology (FERET) dataset for face recognition; and MNIST dataset for hand-written digit recognition. To explore the properties and essence of these architectures, we just conduct experiments on the one-stage networks. It is enough to explain the issue properly. Experimental results show that the PCA-LDANet-1 outperforms both PCANet-1 and LDANet-1 on both datasets. The experimental results demonstrate the effectiveness and distinctiveness of the PCA-LDANet; and the important role of PCA patch reconstruction in the PCA-LDANet.
机译:在本文中,我们提出了一种基于非常基本的数据处理组件的简单有效的图像分类特征学习架构:1)主成分分析(PCA); 2)线性判别分析(LDA);和3)二进制哈希和逐块直方图。在这种架构中,PCA用于重构输入图像的补丁,而LDA用于学习滤波器组。接下来是简单的二进制哈希和用于索引的块状直方图。此体系结构是由LDANet和PCANet推动的,因此称为PCA LDA网络(PCA-LDANet)。它们在拓扑上有一些相似之处。我们已经在用于不同任务的两个视觉数据集上测试了PCA-LDANet,其中包括用于面部识别的面部识别技术(FERET)数据集;以及用于手写数字识别的MNIST数据集。为了探索这些架构的性质和本质,我们仅在单阶段网络上进行实验。足以正确解释问题。实验结果表明,在两个数据集上,PCA-LDANet-1均优于PCANet-1和LDANet-1。实验结果证明了PCA-LDANet的有效性和独特性。以及PCA补丁重建在PCA-LDANet中的重要作用。

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