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Time-Series Model-Adjusted Percentile Features: Improved Percentile Features for Land-Cover Classification Based on Landsat Data

机译:时间序列模型调整后的百分位特征:基于Landsat数据的土地覆盖分类的百分位特征

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摘要

Percentile features derived from Landsat time-series data are widely adopted in land-cover classification. However, the temporal distribution of Landsat valid observations is highly uneven across different pixels due to the gaps resulting from clouds, cloud shadows, snow, and the scan line corrector (SLC)-off problem. In addition, when applying percentile features, land-cover change in time-series data is usually not considered. In this paper, an improved percentile called the time-series model (TSM)-adjusted percentile is proposed for land-cover classification based on Landsat data. The Landsat data were first modeled using three different time-series models, and the land-cover changes were continuously monitored using the continuous change detection (CCD) algorithm. The TSM-adjusted percentiles for stable pixels were then derived from the synthetic time-series data without gaps. Finally, the TSM-adjusted percentiles were used for generating supervised random forest classifications. The proposed methods were implemented on Landsat time-series data of three study areas. The classification results were compared with those obtained using the original percentiles derived from the original time-series data with gaps. The results show that the land-cover classifications obtained using the proposed TSM-adjusted percentiles have significantly higher overall accuracies than those obtained using the original percentiles. The proposed method was more effective for forest types with obvious phenological characteristics and with fewer valid observations. In addition, it was also robust to the training data sampling strategy. Overall, the methods proposed in this work can provide accurate characterization of land cover and improve the overall classification accuracy based on such metrics. The findings are promising for percentile-based land cover classification using Landsat time series data, especially in the areas with frequent cloud coverage.
机译:从Landsat时间序列数据源种的百分位特征在陆地覆盖分类中被广泛采用。然而,由于云,云阴影,雪和扫描线校正器(SLC)-off问题导致的间隙,Landsat有效观察的时间分布在不同像素上具有高度不均匀。另外,在应用百分点特征时,通常不考虑占地面系数据的陆地覆盖变化。在本文中,提出了一种改进的百分位,所谓的时序模型(TSM)-Aded百分位数,用于基于Landsat数据的陆地覆盖分类。首先使用三种不同的时间序列模型建模LANDSAT数据,使用连续变化检测(CCD)算法连续监测陆地覆盖变化。然后从没有间隙的综合时间序列数据导出稳定像素的TSM调整后的百分比。最后,TSM调整后的百分位用于产生监督随机林分类。提出的方法是在三个研究领域的Landsat时间序列数据上实施。将分类结果与使用从原始时间序列数据的原始百分位数的百分比进行了比较。结果表明,使用所提出的TSM调整后百分位数获得的陆地覆盖分类总体精度明显较高,而不是使用原始百分位数获得的百分比。该方法对森林类型更有效,具有明显的鉴效特征,有效观察较少。此外,它对培训数据采样策略也是强大的。总体而言,本作工作中提出的方法可以提供陆地覆盖的准确表征,并根据此类指标提高整体分类准确性。这些调查结果是利用Landsat时间序列数据的百分位的土地覆盖分类,特别是在云覆盖频繁的区域。

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