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A Divide-and-Conquer Approach Towards Understanding Deep Networks

机译:一种理解深度网络的分而治之方法

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Deep neural networks have achieved tremendous success in various fields including medical image segmentation. However, they have long been criticized for being a black-box, in that interpretation, understanding and correcting architectures is difficult as there is no general theory for deep neural network design. Previously, precision learning was proposed to fuse deep architectures and traditional approaches. Deep networks constructed in this way benefit from the original known operator, have fewer parameters, and improved interpretability. However, they do not yield state-of-the-art performance in all applications. In this paper, we propose to analyze deep networks using known operators, by adopting a divide-and-conquer strategy to replace network components, whilst retaining networks performance. The task of retinal vessel segmentation is investigated for this purpose. We start with a high-performance U-Net and show by step-by-step conversion that we are able to divide the network into modules of known operators. The results indicate that a combination of a trainable guided filter and a trainable version of the Frangi filter yields a performance at the level of U-Net (AUC 0.974 vs. 0.972) with a tremendous reduction in parameters (111,536 vs. 9,575). In addition, the trained layers can be mapped back into their original algorithmic interpretation and analyzed using standard tools of signal processing.
机译:深度神经网络在包括医学图像分割在内的各个领域都取得了巨大的成功。但是,长期以来,它们一直被批评为黑匣子,因为深层神经网络设计没有通用理论,因此难以解释,理解和纠正体系结构。以前,提出了精确学习以融合深度架构和传统方法。以这种方式构造的深层网络得益于原始的已知运算符,具有较少的参数并提高了可解释性。但是,它们并不能在所有应用程序中都具有最先进的性能。在本文中,我们建议通过采用分而治之的策略来替换网络组件,同时保留网络性能,从而使用已知的运营商来分析深度网络。为此目的,研究了视网膜血管分割的任务。我们从高性能的U-Net开始,并通过逐步转换来证明我们能够将网络划分为已知运营商的模块。结果表明,可训练的引导滤波器和Frangi滤波器的可训练版本的组合产生了U-Net级别的性能(AUC 0.974对0.972),而参数却大大减少(111,536对9,575)。此外,可以将训练后的层映射回其原始算法解释中,并使用信号处理的标准工具进行分析。

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