基于卷积神经网络的多光谱遥感图像语义分割

Josué López, Stewart René Santos Arce, C. Atzberger, Deni Torres
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引用次数: 3

摘要

最近人工智能(AI)方法的发展势头简化了它在多个研究领域的应用。由于维度、处理时间、计算资源等方面的限制,这种简化在以前并不受欢迎。在人工神经网络(NN)中处理多光谱遥感图像是相当复杂的。由于所使用的方法需要数百万个流程,这些流程需要很长时间才能执行,并且与现有技术(SoA)相比,产生的结果具有竞争力。深度学习(DL)策略已被应用于缓解这些限制,并大大改善了神经网络的使用。因此,本文提出了利用dl - nn对多光谱遥感图像进行语义分割的分析方法。这些图像是由欧洲航天局的哨兵2号卫星星座拍摄的。本研究的目的是将场景的每个像素分为5类:1-植被,2-土壤,3-水,4-云和5-云阴影。光谱波段的选择是分割输入数据集的关键。每种物质的光谱特征有助于区分不同的类别。本研究的结果表明,在竞争处理时间内,所提出的人工智能策略比SoA的其他方法提供了更好的分割精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Networks for Semantic Segmentation of Multispectral Remote Sensing Images
The recent impulse in development of artificial intelligence (AI) methodologies has simplified the application of this in multiple research areas. This simplification was not favorable before, due to the limitations in dimensionality, processing time, computational resources, among others. Working with multispectral remote sensing (RS) images, in an artificial neural network (NN) was quite complex. Due the methods used required millions of processes that took a long time to be executed and produce competitive results compared with the state of the art (SoA). Deep learning (DL) strategies have been applied to alleviate these limitations and have greatly improved the use of neural networks. Therefore, this paper presents the analysis of DL-NNs to perform semantic segmentation of multispectral RS images. Images are captured by the constellation of satellites Sentinel-2 from the European Space Agency. The objective of this research is to classify each pixel of a scene into five categories: 1-vegetation, 2-soil, 3-water, 4-clouds and 5-cloud shadows. The selection of spectral bands for the formation of input datasets for segmentation of these classes is very important. The spectral signatures of each material aid to discern among several classes. Results presented in this work, show that the AI strategy proposed offer better accuracy segmentation than other methods of the SoA in competitive processing time.
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