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Lowering mutual coherence between receptive fields in convolutional neural networks

机译:降低卷积神经网络中感受野之间的相干性

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It has been shown that more accurate signal recovery can be achieved with low-coherence dictionaries in sparse signal processing. In this Letter, the authors extend the low-coherence attribute to receptive fields in convolutional neural networks. A new constrained formulation to train low-coherence convolutional neural network is presented and an efficient algorithm is proposed to train the network. The resulting formulation produces a direct link between the receptive fields of a layer through training procedure that can be used to extract more informative representations from the subsequent layers. Simulation results over three benchmark datasets confirm superiority of the proposed low-coherence convolutional neural network over the unconstrained version.
机译:已经表明,在稀疏信号处理中使用低相干字典可以实现更准确的信号恢复。在这封信中,作者将低相干性属性扩展到卷积神经网络中的接受域。提出了一种训练低相干卷积神经网络的新约束公式,并提出了一种有效的训练网络的算法。最终的配方通过训练程序在层的感受野之间产生了直接联系,该训练过程可用于从后续层中提取更多的信息表示。在三个基准数据集上的仿真结果证实了所提出的低相干卷积神经网络优于无约束版本。

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