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The case for spatial pooling in deep convolutional sparse coding

机译:深卷积稀疏编码中的空间池化情况

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The sparse representation framework is a popular approach due to its desirable theoretical guarantees and the use of sparse representations as feature vectors in machine learning problems. Another seemingly unrelated line of research is deep learning and, in particular, convolutional neural networks (CNNs) which perform extremely well on various machine learning benchmarks. Recently, in [1], a connection between CNNs and convolutional sparse coding (CSC) was established using a simplified CNN model. Motivated by the use of spatial pooling in practical CNN implementations, we investigate the effect of using spatial pooling in the CSC model. We show that the spatial pooling operations do not hinder the performance and can introduce additional benefits.
机译:稀疏表示框架由于其理想的理论保证以及在机器学习问题中使用稀疏表示作为特征向量而成为一种流行的方法。另一个看似无关的研究领域是深度学习,尤其是卷积神经网络(CNN),它们在各种机器学习基准上的表现都非常出色。最近,在[1]中,使用简化的CNN模型在CNN和卷积稀疏编码(CSC)之间建立了联系。出于在实际的CNN实现中使用空间池的动机,我们研究了在CSC模型中使用空间池的效果。我们表明,空间池化操作不会妨碍性能,并且可以带来其他好处。

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