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Object-wise joint-classification change detection for remote sensing images based on entropy query-by fuzzy ARTMAP

机译:基于模糊ARTMAP熵查询的遥感图像目标分类联合变化检测

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摘要

The pixel-wise post-classification comparison (PCC) method is widely used in remote sensing images change detection. However, it is affected by the significant cumulative error caused by single image classification error. What's more, the pixel-wise change detection method always produces salt and pepper effect. To solve the excessive evaluation of changed types and quantity caused by cumulative error and salt and pepper effect, a novel remote sensing image change detection method called entropy query-by fuzzy ARTMAP object-wise joint classification comparison (EQFAM-OBJCC) is presented in this article. Firstly, entropy query-by measurement of active learning is integrated with the fuzzy ARTMAP neural network to choose training samples which contain large amounts of information to improve the classification accuracy. Secondly, joint classification comparison is introduced to obtain the pixel-wise classification results. Finally, the object-wise classification and change detection results are produced by superpixel segmentation method, majority voting rule, and comparison of each superpixels. Experimental results demonstrate the validity of the proposed method. The classification and change detection results show that the proposed method can reduce the cumulative error with an average classification accuracy of 94.12% and a total detection error of 27.03%, and effectively resolve the salt and pepper problem. The proposed method was used to monitor the reclamation status of Liaohe estuary wetland via 10 time series remote sensing images from 1987 to 2014.
机译:像素级分类后比较(PCC)方法被广泛用于遥感图像变化检测。但是,它受单个图像分类错误引起的显着累积错误的影响。此外,逐像素变化检测方法始终会产生盐和胡椒效果。为了解决由于累积误差和椒盐效应而引起的变化量和数量变化的过大评估,提出了一种新的遥感图像变化检测方法,即熵查询-模糊ARTMAP逐项联合分类比较法(EQFAM-OBJCC)。文章。首先,通过主动学习的量度熵查询与模糊ARTMAP神经网络相结合,选择包含大量信息的训练样本,以提高分类的准确性。其次,引入联合分类比较以获得逐像素分类结果。最后,通过超像素分割方法,多数表决规则以及每个超像素的比较,产生了对象分类和变化检测结果。实验结果证明了该方法的有效性。分类和变化检测结果表明,该方法可以减少累积误差,平均分类准确度为94.12%,总检测误差为27.03%,有效解决了椒盐问题。该方法通过1​​987年至2014年的10个时间序列遥感图像,用于辽河口湿地的围垦状况监测。

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