Classification and Change Detection Using Multi-periodic Harmonic Analysis

Myunghee Jun, Sanghoon Lee
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Abstract

Time-series of satellite images have been used to identify and monitor land cover change. Long-term datasets are very useful to examine an area over a period and see what changes have occurred. It is not an easy task to develop satisfactory change detection algorithms due to the processing complexity and extraction of meaningful change pattern of interest. In an effort to find an appropriate approach for this challenge, this paper presents a harmonic model-based change detection method using time- series of satellite images. The proposed algorithm is based on the temporal profile over time for the long-term change rather than a temporary change. A harmonic model can characterize the temporal variability of land covers whose signatures exhibit seasonal trends since components of the harmonic function inherently contain temporal information about seasonal changes. Several experiments were conducted on a multi-temporal dataset of Moderate Resolution Imaging Spectroradiometer (MODIS) over the Korean peninsula, in the time interval of 2012-2016. The results indicate that the proposed algorithm has a great potential for monitoring land cover condition and annual long-term landcover change over large regions.
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基于多周期谐波分析的分类与变化检测
时间序列卫星图像已被用于识别和监测土地覆盖变化。长期数据集对于检查一个区域在一段时间内发生了什么变化非常有用。由于处理的复杂性和对感兴趣的有意义的变化模式的提取,开发令人满意的变化检测算法并不是一件容易的事情。为了找到一种合适的方法来应对这一挑战,本文提出了一种基于谐波模型的卫星图像时间序列变化检测方法。所提出的算法是基于长期变化的时间分布,而不是临时变化。调和模式可以表征地表覆盖的时间变异性,其特征表现出季节趋势,因为调和函数的分量固有地包含有关季节变化的时间信息。在2012-2016年的朝鲜半岛中分辨率成像光谱仪(MODIS)多时相数据集上进行了多次试验。结果表明,该算法在监测大区域土地覆盖状况和长期土地覆盖年际变化方面具有很大的潜力。
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