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SALIENCY-GUIDED CHANGE DETECTION OF REMOTELY SENSED IMAGES USING RANDOM FOREST

机译:使用随机森林对遥感图像进行引导性变化检测

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Studies based on object-based image analysis (OBIA) representing the paradigm shift in change detection (CD) have achieved remarkable progress in the last decade. Their aim has been developing more intelligent interpretation analysis methods in the future. The prediction effect and performance stability of random forest (RF), as a new kind of machine learning algorithm, are better than many single predictors and integrated forecasting method. In this paper, we present a novel CD approach for high-resolution remote sensing images, which incorporates visual saliency and RF. First, highly homogeneous and compact image super-pixels are generated using super-pixel segmentation, and the optimal segmentation result is obtained through image superimposition and principal component analysis (PCA). Second, saliency detection is used to guide the search of interest regions in the initial difference image obtained via the improved robust change vector analysis (RCVA) algorithm. The salient regions within the difference image that correspond to the binarized saliency map are extracted, and the regions are subject to the fuzzy c-means (FCM) clustering to obtain the pixel-level pre-classification result, which can be used as a prerequisite for superpixel-based analysis. Third, on the basis of the optimal segmentation and pixel-level pre-classification results, different super-pixel change possibilities are calculated. Furthermore, the changed and unchanged super-pixels that serve as the training samples are automatically selected. The spectral features and Gabor features of each super-pixel are extracted. Finally, superpixel-based CD is implemented by applying RF based on these samples. Experimental results on Ziyuan 3 (ZY3) multi-spectral images show that the proposed method outperforms the compared methods in the accuracy of CD, and also confirm the feasibility and effectiveness of the proposed approach.
机译:在过去的十年中,基于对象的图像分析(OBIA)代表着变化检测(CD)模式转变的研究取得了显着进展。他们的目标是将来开发更智能的解释分析方法。作为一种新型的机器学习算法,随机森林(RF)的预测效果和性能稳定性优于许多单一预测器和集成预测方法。在本文中,我们提出了一种用于高分辨率遥感影像的新颖CD方法,该方法结合了视觉显着性和RF。首先,使用超像素分割生成高度均匀且紧凑的图像超像素,并通过图像叠加和主成分分析(PCA)获得最佳分割结果。其次,显着性检测用于指导通过改进的鲁棒变化矢量分析(RCVA)算法获得的初始差异图像中感兴趣区域的搜索。提取差异图像中与二值化显着图相对应的显着区域,并对这些区域进行模糊c均值(FCM)聚类以获得像素级预分类结果,可以将其用作前提条件用于基于超像素的分析。第三,基于最佳分割和像素级预分类结果,计算出不同的超像素变化可能性。此外,将自动选择用作训练样本的已更改和未更改的超像素。提取每个超像素的光谱特征和Gabor特征。最后,通过基于这些样本应用RF来实现基于超像素的CD。在Ziyuan 3(ZY3)多光谱图像上的实验结果表明,该方法在CD的准确性上优于比较方法,也证实了该方法的可行性和有效性。

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