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Mixed Pixel Decomposition Based on Extended Fuzzy Clustering for Single Spectral Value Remote Sensing Images

机译:单谱值遥感图像的扩展模糊聚类的混合像素分解

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摘要

The presence of mixed pixels in remote sensing images is the major issue for accurate classification. In this paper, we have focused on two aspects of mixed pixel problem: firstly, to identify mixed pixels from an image and secondly to label them to their appropriate class. In phase I, extraction of mixed pixels has been performed from the RSI images-based super-pixel algorithm and RGB model by using fuzzy C-means (FCM). In phase II, the extracted mixed pixel from phase I has been decomposed to the appropriate class. This new proposed technique is the amalgamation of PSO-FCM (particle swarm optimization-fuzzy C-means) for clustering of mixed pixels and ANN-BPO (artificial neural network-biogeography-based particle swarm optimization) for the classification purpose. Experimental results reveal that the proposed method has improved the accuracy as compared to the existing techniques and succeeds in better classification of the remote sensing images.
机译:遥感图像中混合像素的存在是准确分类的主要问题。 在本文中,我们专注于混合像素问题的两个方面:首先,要从图像中识别混合像素,其次将它们标记为适当的类。 在I阶段I中,通过使用模糊C-Mance(FCM)从基于RSI图像的超像素算法和RGB模型执行混合像素的提取。 在II阶段,来自阶段I的提取的混合像素已被分解到适当的类。 这种新的提出技术是PSO-FCM(粒子群优化 - 模糊C-Mility的融合,用于对分类目的进行混合像素和Ann-BPO(基于人工网络 - 生物地理粒子群)的聚类。 实验结果表明,与现有技术相比,所提出的方法提高了准确性,并在更好地分类遥感图像的比较方面提高了精度。

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