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Beyond Filters: Compact Feature Map for Portable Deep Model

机译:过滤器之外:便携式深度模型的紧凑特征图

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Convolutional neural networks (CNNs) have shown extraordinary performance in a number of applications, but they are usually of heavy design for the accuracy reason. Beyond compressing the filters in CNNs, this paper focuses on the redundancy in the feature maps derived from the large number of filters in a layer. We propose to extract intrinsic representation of the feature maps and preserve the discriminability of the features. Circulant matrix is employed to formulate the feature map transformation, which only requires O(dlog d) computation complexity to embed a d-dimensional feature map. The filter is then re-configured to establish the mapping from original input to the new compact feature map, and the resulting network can preserve intrinsic information of the original network with significantly fewer parameters, which not only decreases the online memory for launching CNN but also accelerates the computation speed. Experiments on benchmark image datasets demonstrate the superiority of the proposed algorithm over state-of-the-art methods.
机译:卷积神经网络(CNN)在许多应用中均显示出非凡的性能,但出于准确性的考虑,它们通常设计繁重。除了压缩CNN中的过滤器外,本文还将重点介绍从图层中大量过滤器派生而来的特征图中的冗余性。我们建议提取特征图的内在表示并保留特征的可分辨性。采用循环矩阵来表示特征图变换,仅需O(dlog d)计算复杂度即可嵌入d维特征图。然后重新配置该过滤器以建立从原始输入到新紧凑特征图的映射,并且生成的网络可以使用少得多的参数来保留原始网络的固有信息,这不仅减少了用于启动CNN的在线内存,而且还减少了加快了计算速度。在基准图像数据集上进行的实验证明了该算法优于最新方法的优越性。

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