Convolution Autoencoder-Based Sparse Representation Wavelet for Image Classification

Tan-Sy Nguyen, Long H. Ngo, M. Luong, M. Kaaniche, Azeddine Beghdadi
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引用次数: 4

Abstract

In this paper, we propose an effective Convolutional Autoencoder (AE) model for Sparse Representation (SR) in the Wavelet Domain for Classification (SRWC). The proposed approach involves an autoencoder with a sparse latent layer for learning sparse codes of wavelet features. The estimated sparse codes are used for assigning classes to test samples using a residual-based probabilistic criterion. Intensive experiments carried out on various datasets revealed that the proposed method yields better classification accuracy while exhibiting a significant reduction in the number of network parameters, compared to several recent deep learning-based methods.
基于卷积自编码器的稀疏表示小波图像分类
本文提出了一种有效的卷积自编码器(AE)模型,用于小波域分类(SRWC)中的稀疏表示(SR)。该方法包括一个带有稀疏隐层的自编码器,用于学习小波特征的稀疏编码。估计的稀疏代码用于使用基于残差的概率准则为测试样本分配类。在各种数据集上进行的密集实验表明,与最近几种基于深度学习的方法相比,所提出的方法产生了更好的分类精度,同时显示出网络参数数量的显着减少。
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