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Detection of contaminated pixels based on the short-term continuity of NDVI and correction using spatio-temporal continuity

机译:基于NDVI的短期连续性检测污染像素并使用时空连续性进行校正

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摘要

The present study developed and assessed a correction technique (CSaTC: Correction based on Spatial and Temporal Continuity) for the detection and correction of contaminated Normalized Difference Vegetation Index (NDVI) time series data. Global Inventory Modeling and Mapping Studies (GIMMS) NDVI data from 1982 to 2006 with a 15-day period and an 8-km spatial resolution was used. CSaTC utilizes short-term continuity of vegetation to detect contaminated pixels, and then, corrects the detected pixels using the spatio-temporal continuity of vegetation. CSaTC was applied to the NDVI data over the East Asian region, which exhibits diverse seasonal and interannual variations in vegetation activities. The correction skill of CSaTC was compared to two previously applied methods, IDR (iterative Interpolation for Data Reconstruction) and Park et al. (2011) using GIMMS NDVI data. CSaTC reasonably resolved the overcorrection and spreading phenomenon caused by excessive correction of Park et al. (2011). The validation using the simulated NDVI time series data showed that CSaTC shows a systematically better correction skill in bias and RMSE irrespective of phenology types of vegetation and noise levels. In general, CSaTC showed a good recovery of the contaminated data appearing over the short-term period on a level similar to that obtained using the IDR technique. In addition, it captured the multi-peak of NDVI, and the germination and defoliating patterns more accurately than that by IDR, which overly compensates for seasons with a high temporal variation and where NDVI data exhibit multi-peaks.
机译:本研究开发并评估了一种校正技术(CSaTC:基于时空连续性的校正),用于检测和校正受污染的归一化植被指数(NDVI)时间序列数据。使用了全球库存建模和制图研究(GIMMS)1982年至2006年的NDVI数据,该数据具有15天的时间段和8公里的空间分辨率。 CSaTC利用植被的短期连续性检测受污染的像素,然后使用植被的时空连续性校正检测到的像素。 CSaTC被应用于东亚地区的NDVI数据,该数据在植被活动方面表现出不同的季节和年际变化。将CSaTC的校正技巧与两种先前应用的方法进行了比较:IDR(用于数据重建的迭代插值)和Park等。 (2011)使用GIMMS NDVI数据。 CSaTC合理地解决了Park等人过度校正造成的过度校正和扩散现象。 (2011)。使用模拟的NDVI时间序列数据进行的验证表明,无论植被的物候类型和噪声水平如何,CSaTC都显示出系统上更好的偏差和RMSE校正技术。总的来说,CSaTC可以很好地恢复短期内出现的受污染数据,其水平类似于使用IDR技术获得的水平。此外,它捕获了NDVI的多个峰值,并且发芽和脱叶的模式比IDR更为精确,后者过度补偿了具有高时间变化的季节,并且NDVI数据表现出多个峰值。

著录项

  • 来源
    《Asia-Pacific Journal of Atmospheric Sciences》 |2013年第4期|511-525|共15页
  • 作者

    A-Ra Cho; Myoung-Seok Suh;

  • 作者单位

    Department of Atmospheric Sciences Kongju National University">(1);

    Department of Atmospheric Sciences Kongju National University">(1);

    Department of Atmospheric Sciences Kongju national University">(2);

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  • 正文语种 eng
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