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A Relative Density Ratio-Based Framework for Detection of Land Cover Changes in MODIS NDVI Time Series

机译:基于相对密度比的MODIS NDVI时间序列中土地覆盖变化检测框架

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摘要

To improve statistical approaches for near real-time land cover change detection in nonGaussian time-series data, we propose a supervised land cover change detection framework in which a MODIS NDVI time series is modeled as a triply modulated cosine function using the extended Kalman filter and the trend parameter of the triply modulated cosine function is used to derive repeated sequential probability ratio test (RSPRT) statistics. The statistics are based on relative density ratios estimated directly from the training set by a relative unconstrained least squares importance Fitting (RULSIF) algorithm, unlike traditional likelihood ratio-based test statistics. We test the framework on simulated, synthetic, and real-world beetle infestation datasets, and show that using estimated relative density ratios, instead of assuming the individual density functions to be Gaussian or approximating them with Gaussian Kernels, in the RSPRT statistics achieves better performance in terms of accuracy and detection delay. We verify the efficiency of the proposed approach by comparing its performance with three existing methods on all the three datasets under consideration in this study. We also propose a simple heuristic technique that tunes the threshold efficiently in difficult cases of near real-time change detection, when we need to take three performance indices, namely, false positives, false negatives, and mean detection delay, into account simultaneously.
机译:为了改进非高斯时间序列数据中近实时土地覆盖变化检测的统计方法,我们提出了一种监督的土地覆盖变化检测框架,其中使用扩展卡尔曼滤波器将MODIS NDVI时间序列建模为三次调制余弦函数。三重调制余弦函数的趋势参数用于导出重复序贯概率比检验(RSPRT)统计信息。与传统的基于似然比的测试统计数据不同,该统计数据基于相对密度比,而该相对密度比是直接通过相对无约束的最小二乘重要性拟合(RULSIF)算法从训练集中估算得出的。我们在模拟的,合成的和真实的甲虫侵扰数据集上测试了该框架,并表明在RSPRT统计数据中使用估计的相对密度比,而不是假设单个密度函数为高斯或用高斯核近似,可以实现更好的性能。在准确性和检测延迟方面。我们通过将本方法的性能与本研究中考虑的所有三个数据集上的三种现有方法的性能进行比较,验证了该方法的效率。我们还提出了一种简单的启发式技术,当需要同时考虑误报,误报和平均检测延迟这三个性能指标时,在接近实时变化检测的困难情况下可以有效地调整阈值。

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