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A supervised approach for simultaneous segmentation and classification of remote sensing images

机译:一种同时分割和分类遥感图像的监督方法

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摘要

Object-based image classification is recognized as one of the best strategies to analyze high spatial resolution remote sensing images. This process includes defining scale parameters to form regions sharing similar characteristics such as color, texture, or shape. Traditionally, in an object-based supervised classification setting the image is classified only after the segmentation process is completed. However, when the imaged objects on the ground are heterogeneous and of different sizes, some resulting segments can be appropriate for classification while others are over or under-segmented. This may cause partial failure of the subsequent classification. In this paper, we introduce a simultaneous approach based on the interception of the segmentation stage by provisional classification of under-growing segments. Our proposal is to optimize the classification process by iteratively updating the labels of previously generated regions only if the estimated posterior probabilities of the winning classes in the new segments increase. Experiments with three multispectral datasets acquired by Landsat-5 TM, QuickBird-II, and WorldView-3 in rural and urban areas compare traditional object-based approach based on region growing with the proposed method using well-established classifiers. Our results show that the proposed method becomes much less sensitive to the choice of segmentation parameters and reaches similar, or even better, classification accuracies.
机译:基于对象的图像分类被认为是分析高空间分辨率遥感图像的最佳策略之一。该过程包括定义比例参数以形成共享相似特征(例如颜色,纹理或形状)的区域。传统上,在基于对象的监督分类设置中,仅在分割过程完成后才对图像进行分类。但是,当地面上的成像对象是异类的且大小不同时,某些结果片段可能适合分类,而其他片段则过度或不足。这可能会导致后续分类的部分失败。在本文中,我们通过对增长不足的细分市场进行临时分类,介绍了一种基于细分阶段的拦截的同步方法。我们的建议是仅在新细分中获胜类别的估计后验概率增加时,通过迭代更新先前生成的区域的标签来优化分类过程。在农村和城市地区,使用Landsat-5 TM,QuickBird-II和WorldView-3获取的三个多光谱数据集的实验,将基于区域增长的传统基于对象的方法与使用成熟的分类器的建议方法进行了比较。我们的结果表明,提出的方法对分割参数的选择变得不那么敏感,并且达到了相似甚至更好的分类精度。

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