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Change Detection Based on Multi-Feature Clustering Using Differential Evolution for Landsat Imagery

机译:基于差分进化的多特征聚类的Landsat影像变化检测

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Change detection (CD) of natural land cover is important for environmental protection and to maintain an ecological balance. The Landsat series of satellites provide continuous observation of the Earth’s surface and is sensitive to reflection of water, soil and vegetation. It offers fine spatial resolutions (15–80 m) and short revisit times (16–18 days). Therefore, Landsat imagery is suitable for monitoring natural land cover changes. Clustering-based CD methods using evolutionary algorithms (EAs) can be applied to Landsat images to obtain optimal changed and unchanged clustering centers (clusters) with minimum clustering index. However, they directly analyze difference image (DI), which finds itself subject to interference by Gaussian noise and local brightness distortion in Landsat data, resulting in false alarms in detection results. In order to reduce image interferences and improve CD accuracy, we proposed an unsupervised CD method based on multi-feature clustering using the differential evolution algorithm (M-DECD) for Landsat Imagery. First, according to characteristics of Landsat data, a multi-feature space is constructed with three elements: Wiener de-noising, detail enhancement, and structural similarity. Then, a CD method based on differential evolution (DE) algorithm and fuzzy clustering is proposed to obtain global optimal clusters in the multi-feature space, and generate a binary change map (CM). In addition, the control parameters of the DE algorithm are adjusted to improve the robustness of M-DECD. The experimental results obtained with four Landsat datasets confirm the effectiveness of M-DECD. Compared with the results of conventional methods and the current state-of-the-art methods based on evolutionary clustering, the detection accuracies of the M-DECD on the Mexico dataset and the Sardinia dataset are very close to the best results. The accuracies of the M-DECD in the Alaska dataset and the large Canada dataset increased by about 3.3% and 11.9%, respectively. This indicates that multiple features are suitable for Landsat images and the DE algorithm is effective in searching for an optimal CD result.
机译:天然土地覆盖的变化检测(CD)对于环境保护和维持生态平衡非常重要。 Landsat系列卫星可连续观察地球表面,并且对水,土壤和植被的反射敏感。它提供了良好的空间分辨率(15–80 m)和较短的重访时间(16–18天)。因此,Landsat影像适合监视自然土地覆盖变化。可以将使用进化算法(EA)的基于聚类的CD方法应用于Landsat图像,以获得具有最小聚类索引的最佳变化和不变聚类中心(聚类)。但是,他们直接分析差异图像(DI),发现自身受到高斯噪声和Landsat数据中局部亮度失真的干扰,从而导致检测结果出现错误警报。为了减少图像干扰并提高CD精度,我们提出了一种基于多特征聚类的无监督CD方法,该方法使用Landsat影像的差分进化算法(M-DECD)。首先,根据Landsat数据的特征,构建具有三个要素的多功能空间:维纳降噪,细节增强和结构相似性。然后,提出了一种基于差分演化(DE)算法和模糊聚类的CD方法,以获得多特征空间中的全局最优聚类,并生成二元变化图(CM)。另外,调整DE算法的控制参数以提高M-DECD的鲁棒性。用四个Landsat数据集获得的实验结果证实了M-DECD的有效性。与常规方法的结果和基于进化聚类的最新技术方法相比,M-DECD在墨西哥数据集和撒丁岛数据集上的检测精度非常接近最佳结果。阿拉斯加数据集和大型加拿大数据集中的M-DECD的准确性分别提高了约3.3%和11.9%。这表明多种功能适用于Landsat图像,并且DE算法可有效地搜索最佳CD结果。

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