Low Effectiveness of Non-Geometric-Operation Data Augmentations for Lesion Segmentation with Fully Convolution Networks

Yuming Qiu, Xiaolin Qin, Ju Zhang
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引用次数: 1

Abstract

Data augmentation is a prevalent strategy to enlarge the training data in order to enhance the generalization of the model of deep convolutional neural networks (DCNNs). However, not all of augmentation schemes are always effective for all types of DCNNs models, especially for fully convolutional networks (FCNs) which greatly improved semantic segmentation by employing a skip architecture that fuses the feature hierarchy to combine deep, coarse, semantic information and shallow, fine, appearance information. In order to make the effectiveness of data augmentation clear, in this work, we propose to divide the augmentation schemes into two groups, geometric operations and non-geometric operations. Through analyzing the performance of them for lesion segmentation with FCNs, it is found that non-geometric-operation data augmentations are less effective in two dermoscopy datasets. Moreover, we further theoretically revealed that the skip architecture in FCNs is the main reason behind this finding. This work is of value on guiding the practice of data augmentation while using FCNs, and enlightening significance for analyzing other skip architecture deep neural networks.
数据增强是深度卷积神经网络(deep convolutional neural networks, DCNNs)为提高模型泛化能力而扩大训练数据的一种常用策略。然而,并不是所有的增强方案都对所有类型的DCNNs模型有效,特别是对于全卷积网络(fcn),它通过采用融合特征层次的跳跃架构来结合深度、粗糙的语义信息和浅、精细的外观信息,极大地改善了语义分割。为了明确数据增广的有效性,本文提出将增广方案分为几何运算和非几何运算两类。通过分析两种方法在fnc病灶分割中的性能,发现非几何操作数据增强在两种皮肤镜数据集上的效果较差。此外,我们进一步从理论上揭示了fcn中的跳跃结构是这一发现背后的主要原因。该工作对指导fns数据增强的实践具有一定的价值,对分析其他跳跃结构深度神经网络具有一定的启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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