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A fusion approach to forest disturbance mapping using time series ensemble techniques

机译:使用时间序列合奏技术森林扰动映射的融合方法

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Time series analysis of Landsat data is widely used for assessing forest change at the large-area scale. Various change detection algorithms have been proposed, each employing different techniques to characterise abrupt disturbance events and longer term trends. However, results can vary significantly, depending on the algorithm, parameters and the spectral index (or indices) chosen. This mismatch in results has led to researchers hypothesizing that an ensemble based approach may increase accuracy. In this study we assess two change detection algorithms (LandTrendr and the R package strucchange), each with three indices (the Normalized Difference Vegetation Index or NDVI, the Normalized Burn Ratio or NBR, and Tasseled Cap Wetness or TCW). We test their ability to detect abrupt disturbances in sclerophyll forests over a 29 year time period, and subsequently evaluate a number of ensembles, using simple fusion rules and Random Forests models. A total of 4087 manually interpreted reference pixels, sampled from 9 million ha of forest, were used for training and validation. In addition, we assess the effects of priming the Random Forests classifier with confusing cases (commission errors from the time series algorithms). Our results clearly show that ensembles combining multiple change detection techniques out-perform any one method. Our most accurate Random Forests model, using an ensemble of all 6 algorithm outputs, along with 3 bi-temporal change rasters (change in NBR, NDVI and TCW), had an overall error rate of 7%, compared with the most accurate single algorithm/index approach (LandTrendr with NBR), which had an overall error of 21%. Our findings also indicate that acceptable results (14% error) can be achieved without the use of traditional change detection algorithms, by using robust reference data and Random Forests classification. However, by priming the classifier with confusing cases informed by the change detection algorithms, commission errors decreased subs
机译:LANDSAT数据的时间序列分析广泛用于评估大面积规模的森林变化。已经提出了各种改变检测算法,每个改变检测算法每个采用不同的技术来表征突然的扰动事件和长期趋势。然而,结果可以显着变化,具体取决于所选择的算法,参数和光谱索引(或指标)。这种不匹配的结果导致研究人员假设基于合奏的方法可能会增加精度。在这项研究中,我们评估了两个变化检测算法(Landtrendr和R包Strucchange),每个变化检测算法(Landtrendr和R封装Strucchange)有三个索引(归一化差异植被指数或NDVI,归一化烧伤比或NBR,以及流苏盖湿度或TCW)。我们在29年的时间段内测试他们检测硬粒林中突然干扰的能力,随后使用简单的融合规则和随机林模型来评估许多集合。共有4087个手动解释的参考像素,从900万公顷的森林中取样,用于培训和验证。此外,我们还评估将随机森林分类器与混乱的案例(来自时间序列算法的佣金误差)进行评估。我们的结果清楚地表明,组合多个变化检测技术的合奏会出现任何一种方法。我们最准确的随机森林模型,使用所有6种算法输出的集合,以及3个双颞改变栅格(NBR,NDVI和TCW的变化),整体错误率为7%,与最准确的单算法相比/索引方法(带NBR的Landtrendr),总体误差为21%。我们的研究结果还表明,通过使用稳健的参考数据和随机林分类,可以在不使用传统变化检测算法的情况下实现可接受的结果(14%误差)。但是,通过将分类器启动,通过更改检测算法通知令人困惑的情况,佣金误差减少了潜艇

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