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A rough set decision tree based MLP-CNN for very high resolution remotely sensed image classification

机译:基于粗糙集决策树的MLP-CNN用于超高分辨率遥感影像分类

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摘要

Recent advances in remote sensing have witnessed a great amount of very high resolution (VHR) images acquired at sub-metre spatial resolution. These VHR remotely sensed data has post enormous challenges in processing, analysing and classifying them effectively due to the high spatial complexity and heterogeneity. Although many computer-aid classification methods that based on machine learning approaches have been developed over the past decades, most of them are developed toward pixel level spectral differentiation, e.g. Multi-Layer Perceptron (MLP), which are unable to exploit abundant spatial details within VHR images. This paper introduced a rough set model as a general framework to objectively characterize the uncertainty in CNN classification results, and further partition them into correctness and incorrectness on the map. The correct classification regions of CNN were trusted and maintained, whereas the misclassification areas were reclassified using a decision tree with both CNN and MLP. The effectiveness of the proposed rough set decision tree based MLP-CNN was tested using an urban area at Bournemouth, United Kingdom. The MLP-CNN, well capturing the complementarity between CNN and MLP through the rough set based decision tree, achieved the best classification performance both visually and numerically. Therefore, this research paves the way to achieve fully automatic and effective VHR image classification.
机译:遥感技术的最新进展见证了在亚米级空间分辨率下获得的大量超高分辨率(VHR)图像。由于高度的空间复杂性和异构性,这些VHR遥感数据在有效处理,分析和分类数据方面面临巨大挑战。尽管在过去的几十年中已经开发了许多基于机器学习方法的计算机辅助分类方法,但它们中的大多数都朝着像素级光谱区分的方向发展,例如,多层感知器(MLP),无法利用VHR图像中的大量空间细节。本文引入了粗糙集模型作为通用框架,以客观地表征CNN分类结果的不确定性,并在地图上将其进一步分为正确性和不正确性。 CNN的正确分类区域是受信任和维护的,而误分类区域则使用带有CNN和MLP的决策树进行了重新分类。在英国伯恩茅斯的市区测试了所提出的基于粗糙集决策树的MLP-CNN的有效性。 MLP-CNN通过基于粗糙集的决策树很好地捕获了CNN和MLP之间的互补性,在视觉和数字上均实现了最佳分类性能。因此,本研究为实现全自动有效的VHR图像分类铺平了道路。

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