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首页> 外文期刊>Ecological indicators >Improving tropical deforestation detection through using photosynthetic vegetation time series - (PVts-β)
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Improving tropical deforestation detection through using photosynthetic vegetation time series - (PVts-β)

机译:通过使用光合植被时间序列-(PVts-β)改善热带森林砍伐的检测

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摘要

This paper proposes a new approach of change detection that reduces seasonality in time series by using Photosynthetic Vegetation Time Series (PVTS) from satellite images. With this approach, each pixel value represents at the subpixel level a fraction of the photosynthetic forest’s activity. Our hypothesis is based on an assumption that photosynthetic vegetation fractions will remain constant until a disturbing agent (natural or anthropic) occurs. Using Landsat data, we compared our approach with the Carnegie Landsat Systems Analysis-Lite (CLASlite) approach and with the national reports of the Ministry of the Environment of Perú (MINAM). After reducing seasonal variations in Landsat data, we detected deforestation events with a new detection method. Our approach (which was called PVts-β) of detection is a simple method that does not model the seasonality and it only requires as inputs: i) the average and standard deviation of the time series of a pixel and ii) a threshold magnitude (β) that was calibrated to detect deforestation events in tropical forests. For the PVts-β approach, the results of calibration show that deforestation was optimally detected for β = (5,6), higher or lower than this range, the biases favor to false detections and favor the omission of deforestation too. On the other hand, the overall accuracy for the PVts-β approach was 91.1%, with an omission and commission of 8.3% and 0.5% respectively, while for CLASlite the overall accuracy was 79.2%, with an omission and commission of 20.8% and 0.0% respectively. The differences in the overall accuracy between the PVts-β and CLASlite approach were significant, being atmospheric noise a main problem which CLASlite usually does not work optimally. The strength of our PVts-β approach is the early detection at the subpixel level of deforestation events that, added to our new method of change detection explain the little omission obtained in the results. Therefore, the PVts-β approach -that we propose here- provides the opportunity to monitoring deforestation events in tropical forests at sub-annual scales using Landsat data, and it can be used for near-real-time change detection monitoring without a doubt.
机译:本文提出了一种新的变化检测方法,该方法通过使用卫星图像的光合植被时间序列(PVTS)来减少时间序列的季节性。使用这种方法,每个像素值在子像素级别代表了光合作用森林活动的一部分。我们的假设基于这样一个假设,即光合植被的组成部分将保持恒定,直到出现干扰物(自然或人为的)。使用Landsat数据,我们将我们的方法与卡内基Landsat系统分析精简版(CLASlite)方法以及秘鲁环境部(MINAM)的国家报告进行了比较。在减少Landsat数据的季节性变化之后,我们使用一种新的检测方法检测到了森林砍伐事件。我们的检测方法(称为PVts-β)是一种简单的方法,不对季节性进行建模,它仅需要作为输入:i)像素时间序列的平均值和标准差,以及ii)阈值幅度(校准用于检测热带森林中森林砍伐事件的β)。对于PVts-β方法,校准结果表明,对于β=(5,6),高于或低于此范围,最佳检测到了森林砍伐,偏向倾向于错误检测,也倾向于忽略森林砍伐。另一方面,PVts-β方法的整体准确度为91.1%,遗漏和提成分别为8.3%和0.5%,而CLASlite的整体准确度为79.2%,遗漏和提成为20.8%,分别为0.0%。 PVts-β方法与CLASlite方法之间的整体精度差异很大,这是大气噪声,这是CLASlite通常无法最佳工作的主要问题。 PVts-β方法的优势在于可以在亚像素级的森林砍伐事件中进行早期检测,并将其添加到我们的变化检测新方法中,可以解释结果中几乎没有遗漏的现象。因此,我们在此提出的PVts-β方法为使用Landsat数据监测亚年度尺度的热带森林中的毁林事件提供了机会,毫无疑问,它可用于近实时变化检测监测。

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