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Efficient paddy field mapping using Landsat-8 imagery and object-based image analysis based on advanced fractel net evolution approach

机译:基于Landsat-8影像的高效稻田制图和基于高级fractel网络演化方法的基于对象的图像分析

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摘要

This paper proposes an efficient paddy field mapping method using object-based image analysis and a bitemporal data set acquired by Landsat-8 Operational Land Imager. In the proposed approach, image segmentation is the first step and its quality has a serious impact on the accuracy of paddy field classification. In order to improve segmentation quality, a new segmentation algorithm based on a frequently used method, fractal net evolution approach, is developed, with improvement mainly in merging criteria. In order to automate the process of scale parameter determination, an unsupervised scale selection method is utilized to determine the optimal scale parameter for the proposed image segmentation approach. After segmentation, four types of object-based features including geometric, spectral, textural, and contextual information are extracted and input into the subsequent classification procedure. By using a random forest classifier, paddy fields and nonpaddy fields are separated. The proposed image segmentation method and the final classification result are both quantitatively evaluated. Our segmentation method outperformed two popular algorithms according to three supervised evaluation criteria. The classification result with overall accuracy of 91.00% and kappa statistic of 0.82 validated the effectiveness of the proposed framework. Further analysis on feature importance indicated that spectral features made the most contribution as compared to the other three types of object-based features.
机译:本文提出了一种有效的稻田制图方法,该方法利用基于对象的图像分析和Landsat-8 Operational Land Imager采集的位时数据集。在提出的方法中,图像分割是第一步,其质量对稻田分类的准确性有严重的影响。为了提高分割质量,提出了一种基于分形网络演化方法的常用分割算法,主要对合并准则进行了改进。为了使比例尺参数确定过程自动化,采用了无监督的比例尺选择方法来确定所提出的图像分割方法的最佳比例尺参数。分割后,将提取四种类型的基于对象的特征,包括几何,光谱,纹理和上下文信息,并将其输入到后续的分类过程中。通过使用随机森林分类器,将稻田和非稻田分开。提出的图像分割方法和最终的分类结果都进行了定量评估。根据三个监督评估标准,我们的分割方法优于两种流行的算法。分类结果的总体准确度为91.00%,kappa统计量为0.82,验证了所提出框架的有效性。对特征重要性的进一步分析表明,与其他三种基于对象的特征相比,光谱特征贡献最大。

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