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Subset selection for visualization of relevant image fractions for deep learning based semantic image segmentation

机译:用于可视化相关图像部分的子集选择,用于基于深度学习的语义图像分割

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摘要

Semantic image segmentation is a challenging problem from image processing where deep convolutional neural networks (CNN) have been applied with great success in the recent years. It deals with pixel-wise classification of an input image, dividing it into regions of multiple object classes. However, CNNs are opaque models. Given a trained CNN, it is hard to tell which information encoded in the input image is important for the network to perform segmentation. Such information could be useful to judge whether a trained network learned to segment in a plausible way or how its performance can be improved. For a trained CNN, we formulate an optimization problem to extract relevant image fractions for semantic segmentation. We try to identify a subset of pixels that contain the relevant information for the segmentation of one selected object class. In experiments on the Cityscapes dataset, we show that this is an easy way to gain valuable insight into a CNN trained for semantic segmentation. Looking at the relevant image fractions, we can identify possible limits of a trained network and draw conclusions about possible improvements. (c) 2017 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:语义图像分割是图像处理中一个具有挑战性的问题,近年来,深度卷积神经网络(CNN)的应用非常成功。它处理输入图像的按像素分类,将其划分为多个对象类别的区域。但是,CNN是不透明的模型。给定训练有素的CNN,很难说出输入图像中编码的哪些信息对于网络执行分段很重要。此类信息可能有助于判断受过训练的网络是否学会了以合理的方式进行分段或如何提高其性能。对于受过训练的CNN,我们制定了一个优化问题,以提取相关的图像分数进行语义分割。我们尝试识别一个像素子集,其中包含一个细分对象类别的相关信息。在Cityscapes数据集上进行的实验中,我们证明了这是一种获得宝贵经验的简便方法,可深入了解经过语义分割训练的CNN。查看相关的图像分数,我们可以确定受训网络的可能限制,并得出有关可能改进的结论。 (c)2017富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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    《Journal of the Franklin Institute》 |2018年第4期|1931-1944|共14页
  • 作者单位

    Univ Stuttgart, Inst Signal Proc & Syst Theory, Pfaffenwaldring 47, D-70569 Stuttgart, Germany;

    Univ Stuttgart, Inst Signal Proc & Syst Theory, Pfaffenwaldring 47, D-70569 Stuttgart, Germany;

    Univ Stuttgart, Inst Signal Proc & Syst Theory, Pfaffenwaldring 47, D-70569 Stuttgart, Germany;

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