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Application of Principal Component Analysis to Remote Sensing Data for Deforestation Monitoring

机译:主成分分析在砍伐森林监测中的遥感数据中的应用

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Principal Component Analysis (PCA) is applied to Sentinel 2 Multi-Spectral Instrument (MSI) imagery to investigate its ability to detect deforestation through direct analysis of resulting Singular Values and Principal Component loading matrices. Initial work aims to compare deforestation detection in small areas across North-East Rondonia, Brazil with previous deforestation studies. Subsequently, a deforestation analysis of the Sentinel 2 MSI using PCA in Sub-Saharan Africa is presented. Standardised PCA is applied through the Singular Value Decomposition (SVD) of channel standardised, resampled input imagery. First, cropped sub-areas of input imagery are considered, termed local PCA. Local PCA is applied to images separately (separate rotation) and to two-year image composites (merged rotation). Both approaches were found to detect forest cover changes, with separate rotation allowing for the generation of time-series data. The change detection resolution of both approaches is relatively low; being able to detect only if change has occurred in the general area and not the exact location of greatest change. In order to improve change detection resolution and identify the sub-areas of greatest change, separate rotation PCA is applied on a pixel scale. A simple statistical threshold is used to implement bi-temporal change detection, demonstrating the ability of this approach to detect forest cover changes at a higher resolution. Lessons learned from the separate rotation local PCA technique is used to analyse forest cover changes in an area in Sub-Saharan Africa.
机译:主要成分分析(PCA)应用于Sentinel 2多光谱仪器(MSI)图像,以研究通过直接分析所得到的奇异值和主成分加载矩阵来检测砍伐森林的能力。初始工作旨在将巴西东北隆诺尼亚横跨巴西的小区的砍伐森林检测与以前的森林砍伐研究比较。随后,提出了在撒哈拉非洲在撒哈拉非洲使用PCA的Sentinel 2 MSI的森林殖民分析。标准化PCA通过奇异值分解(SVD)的信道标准化,重采样输入图像。首先,考虑输入图像的裁剪子区域,称为本地PCA。本地PCA单独应用于图像(单独旋转)和两年的图像复合材料(合并旋转)。发现两种方法都发现森林覆盖变化,具有单独的旋转,允许产生时间序列数据。两种方法的变化检测分辨率相对较低;只有在常规区域中发生变化而不是最大变化的确切位置时才能够检测。为了改善变化检测分辨率并识别最大变化的子区域,将单独的旋转PCA应用于像素刻度。使用简单的统计阈值来实现双颞改变检测,证明这种方法以更高分辨率检测森林覆盖变化的能力。从单独的旋转本地PCA技术中汲取的经验教训用于分析撒哈拉以南非洲地区的森林覆盖变化。

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