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A novel unsupervised change detection approach based on reconstruction independent component analysis and ABC-Kmeans clustering for environmental monitoring

机译:基于重构独立分量分析和ABC-Kmeans聚类的环境监测新无监督变化检测方法

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摘要

In this paper, I propose a new unsupervised change detection method for optical satellite imagery. The proposed technique consists of three phases. In the first stage, difference images are calculated using four different functions. Two of the functions were first used in this study. In the second stage, using Reconstruction Independent Component Analysis, this four-difference matrix is projected to one feature. In the last stage, clustering is performed. Kmeans tuned by Artificial Bee Colony (ABC-Kmeans) clustering technique has been developed and proposed by following a different strategy in the clustering phase. The effectiveness of the proposed approach was examined using two different datasets, Sardinia and Mexico. Quantitative evaluation was performed in two stages. In the first stage, proposed method was compared with different unsupervised change detection algorithms using False Alarm, Missed Alarm, Total Error, and Total Error Rate metrics which are calculated using ground truth image in dataset. In the second experimental study, the proposed approach is compared in detail with PCA-Kmeans approach, which is quite often preferred for similar studies, using the Mean Squared Error, Peak Signal to Noise Ratio, Structural Similarity Index, and Universal Image Quality Index metrics. According to quantitative and qualitative analysis, proposed approach can produce quite successful results using optical remote sensing data.
机译:在本文中,我提出了一种新的无监督的光学卫星图像变化检测方法。所提出的技术包括三个阶段。在第一阶段,使用四个不同的函数计算差异图像。在这项研究中首先使用了两个功能。在第二阶段,使用“重建独立分量分析”,将这个四差矩阵投影到一个特征上。在最后阶段,执行聚类。通过在聚类阶段遵循不同的策略,已经开发并提出了通过人工蜂群(ABC-Kmeans)聚类技术调整的Kmeans。使用两个不同的数据集(撒丁岛和墨西哥)检查了该方法的有效性。定量评估分两个阶段进行。在第一阶段,将所提出的方法与使用虚假警报,遗漏警报,总误差和总误差率指标的不同无监督变化检测算法进行比较,这些指标是使用数据集中的地面真实图像计算的。在第二项实验研究中,使用均方误差,峰信噪比,结构相似性指数和通用图像质量指数指标,将拟议的方法与PCA-Kmeans方法进行了详细比较,后者在类似研究中通常是首选方法。根据定量和定性分析,所提出的方法可以使用光学遥感数据获得相当成功的结果。

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