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首页> 外文期刊>Journal of visual communication & image representation >MADPL-net: Multi-layer attention dictionary pair learning network for image classification
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MADPL-net: Multi-layer attention dictionary pair learning network for image classification

机译:MADPL-net:用于图像分类的多层注意力字典对学习网络

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摘要

With the great success of deep neural networks, combining deep learning with traditional dictionary learning has become a hot issue. However, the performance of these methods is still limited for several reasons. First, some existing methods update dictionary learning and classifier as two independent modules, which limits the classification performance. Second, the non-attention dictionary is learned to represent all images, reducing the model representation flexibility. In this paper, we design a novel end-to-end model named Multi layer Attention Dictionary Pair Learning Network (MADPL-net), which integrates the learning schemes of the convolutional neural network, deep encoder learning, and attention dictionary pair learning (ADicL) into a unified framework. The encoder layer contains the ADicL block, which selects more image-attentive atoms in the dictionary pair block via the softmax function to ensure MADPL-net classification capability. In addition, ADicL schema can yield discriminative dictionary atoms and feature maps with high inter-class separation and high intra-class compactness. To improve the sparse representation learning performance, MADPL-net adds l(1)-norm constraint of the analysis dictionary to the cross-entropy loss function. Extensive experiments show that MADPL-net can achieve excellent performance over other state-of-the-arts.
机译:随着深度神经网络的巨大成功,深度学习与传统字典学习的结合成为热点问题。然而,由于几个原因,这些方法的性能仍然受到限制。首先,一些现有方法将字典学习和分类器更新为两个独立的模块,限制了分类性能。其次,学习非注意力字典来表示所有图像,降低了模型表示的灵活性。在本文中,我们设计了一种名为多层注意力字典对学习网络(MADPL-net)的新型端到端模型,该模型将卷积神经网络、深度编码器学习和注意力字典对学习(ADicL)的学习方案集成到一个统一的框架中。编码器层包含ADicL模块,通过softmax函数在字典对模块中选择更多图像关注的原子,以确保MADPL-net分类能力。此外,ADicL模式可以产生具有高类间分离度和高类内紧凑性的判别字典原子和特征图。为了提高稀疏表示学习性能,MADPL-net在交叉熵损失函数中增加了分析字典的l(1)范数约束。大量的实验表明,与其他最先进的技术相比,MADPL-net可以实现出色的性能。

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