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Deep Dictionary Learning: A PARametric NETwork Approach

机译:深度词典学习:一种参数网络方法

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Deep dictionary learning seeks multiple dictionaries at different image scales to capture complementary coherent characteristics. We propose a method for learning a hierarchy of synthesis dictionaries with an image classification goal. The dictionaries and classification parameters are trained by a classification objective, and the sparse features are extracted by reducing a reconstruction loss in each layer. The reconstruction objectives in some sense regularize the classification problem and inject source signal information in the extracted features. The performance of the proposed hierarchical method increases by adding more layers, which consequently makes this model easier to tune and adapt. The proposed algorithm furthermore shows a remarkably lower fooling rate in the presence of adversarial perturbation. The validation of the proposed approach is based on its classification performance using four benchmark datasets and is compared to a Convolutional Neural Network (CNN) of similar size.
机译:深度词典学习在不同的图像比例下寻找多个词典,以捕获互补的相干特征。我们提出了一种用于学习具有图像分类目标的合成字典层次结构的方法。通过分类目标训练字典和分类参数,并通过减少每层中的重建损失来提取稀疏特征。从某种意义上说,重建目标可以规范分类问题,并在提取的特征中注入源信号信息。所提出的分层方法的性能通过添加更多的层来提高,因此使该模型更易于调整和适应。所提出的算法还显示出在存在对抗性扰动的情况下显着更低的愚弄率。所提出方法的验证基于其使用四个基准数据集的分类性能,并与相似大小的卷积神经网络(CNN)进行了比较。

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