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Land Cover Classification of Landsat Data with Phenological Features Extracted from Time Series MODIS NDVI Data

机译:从时间序列MODIS NDVI数据中提取的具有物候特征的Landsat数据的土地覆盖分类

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Temporal-related features are important for improving land cover classification accuracy using remote sensing data. This study investigated the efficacy of phenological features extracted from time series MODIS Normalized Difference Vegetation Index (NDVI) data in improving the land cover classification accuracy of Landsat data. The MODIS NDVI data were first fused with Landsat data via the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) algorithm to obtain NDVI data at the Landsat spatial resolution. Next, phenological features, including the beginning and ending dates of the growing season, the length of the growing season, seasonal amplitude, and the maximum fitted NDVI value, were extracted from the fused time series NDVI data using the TIMESAT tool. The extracted data were integrated with the spectral data of the Landsat data to improve classification accuracy using a maximum likelihood classifier (MLC) and support vector machine (SVM) classifier. The results indicated that phenological features had a statistically significant effect on improving the land cover classification accuracy of single Landsat data (an approximately 3% increase in overall classification accuracy), especially for vegetation type discrimination. However, the phenological features did not improve on statistical measures including the maximum, the minimum, the mean, and the standard deviation values of the time series NDVI dataset, especially for human-managed vegetation types. Regarding different classifiers, SVM could achieve better classification accuracy than the traditional MLC classifier, but the improvement in accuracy obtained using advanced classifiers was inferior to that achieved by involving the temporally derived features for land cover classification.
机译:与时间相关的功能对于使用遥感数据提高土地覆盖分类的准确性非常重要。这项研究调查了从时间序列MODIS归一化植被指数(NDVI)数据中提取的物候特征在提高Landsat数据的土地覆盖分类准确性方面的功效。首先通过空间和时间自适应反射融合模型(STARFM)算法将MODIS NDVI数据与Landsat数据融合,以Landsat空间分辨率获得NDVI数据。接下来,使用TIMESAT工具从融合的时间序列NDVI数据中提取物候特征,包括生长季节的开始和结束日期,生长季节的长度,季节振幅以及最大拟合NDVI值。使用最大似然分类器(MLC)和支持向量机(SVM)分类器将提取的数据与Landsat数据的光谱数据集成在一起,以提高分类准确性。结果表明,物候特征对提高单个Landsat数据的土地覆盖分类准确度具有统计学上的显着影响(总体分类准确度提高了约3%),尤其是对于植被类型判别而言。但是,物候特征在包括时间序列NDVI数据集的最大值,最小值,均值和标准偏差值的统计度量上并没有改善,尤其是对于人类管理的植被类型而言。关于不同的分类器,SVM可以比传统的MLC分类器实现更好的分类精度,但是使用高级分类器获得的精度提升不及通过将时间推导的特征纳入土地覆被分类所实现的精度。

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