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Supervised remote sensing image segmentation using boosted convolutional neural networks

机译:使用增强卷积神经网络的监督遥感影像分割

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In this paper, a region segmentation technique for remote sensing images using a boosted committee of Convolutional Neural Networks (CNNs) coupled with inter-band and intra-band fusion, is proposed. The vast heterogeneity in remote sensing images restricts the application of existing segmentation methods that often rely on a set of predefined feature detectors along with tunable parameters. Therefore, it is highly challenging to design a segmentation technique which could achieve high accuracy while simultaneously maintaining strong generalization particularly for visual data with improved spatial, spectral, and temporal resolutions. The proposed method is a fusion framework consisting of a set of thirty boosted networks that derive individual probability maps on the location of region boundaries from the different multi-spectral bands and combines them into one using an averaging inter-band fusion scheme. The boundaries are then thinned, connected, and region segmented using a morphological intra-band fusion scheme. Qualitative and quantitative results, on publicly-available datasets, confirm the superiority of the proposed segmentation method over existing state-of-art techniques. In addition, the paper also demonstrates the effect of some variations in design-choices of the proposed method. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于卷积神经网络(CNN)的增强委员会结合带间和带内融合的遥感图像区域分割技术。遥感图像的巨大异质性限制了现有分割方法的应用,这些分割方法通常依赖于一组预定义的特征检测器以及可调参数。因此,设计一种分割技术要具有很高的准确性,同时又要保持强烈的概括性,尤其是对于具有改进的空间,光谱和时间分辨率的视觉数据,这是极富挑战性的。所提出的方法是一种融合框架,该融合框架由一组三十个增强网络组成,该网络从不同的多光谱波段中得出区域边界位置上的个体概率图,并使用平均带间融合方案将它们组合成一个。然后使用形态学内带融合方案对边界进行细化,连接和区域分割。公开数据集上的定性和定量结果证实了所提出的分割方法优于现有的最新技术。此外,本文还论证了所提出方法的设计选择中某些变化的影响。 (C)2016 Elsevier B.V.保留所有权利。

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