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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Assessing fruit-tree crop classification from Landsat-8 time series for the Maipo Valley, Chile
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Assessing fruit-tree crop classification from Landsat-8 time series for the Maipo Valley, Chile

机译:从Landsat-8时间序列评估智利迈坡谷的果树作物分类

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Satellite image time series (SITS) provide spectral-temporal features that describe phenological changes in vegetation over the growing season, which is expected to facilitate the classification of crop types. While most SITS-based crop type classifications were focused on NDVI (normalized difference vegetation index) temporal profiles, less attention has been paid to using the complete image spectral resolution of the time series. In this work we assessed different approaches to SITS-based classification of four major fruit-tree crops in the Maipo Valley, central Chile, during the 2013-14 growing season. We compared four feature sets from a time series comprised of eight cloud-free Landsat-8 images: the full-band SITS, the NDVI and NDWI (normalized difference water index) temporal profiles, and an image stack with all the feature sets combined. State-of-the-art classifiers (linear discriminant analysis, LDA; random forest; and support vector machine) were applied on each feature set at different training sample sizes (N = 100, 200, 400, 800 and 2291 fields), and classification results were assessed by cross-validation of the misclassification error rate (MER). For all the feature sets overall results were good (MERs <= 0.21) although substantially improved classification accuracies were achieved when the full-band SITS was employed (MER 0.14-0.05). Classifications applied on the NDVI temporal profile consistently had the worst performance. For a sample size of 200 fields, LDA using the full-band SITS of image dates 1, 3, 6 and 8 produced the best tradeoff between the number of images and classification accuracy (MER = 0.06), being the green, red, blue and SWIR (short-wave infrared) bands of image date 1 (acquired at the early greenup stage) the most relevant for crop type discrimination. Our results show the importance of considering the complete image spectral resolution for SITS-based crop type classifications as the commonly used NDVI temporal profile and their red and near infrared bands were not found the most significant to discriminate the crop types of interest. Furthermore, in light of the good results obtained, the methodology used here might be transferred to similar agricultural lands cultivated with the same crop types, thus providing a reliable and relatively efficient methodology for creating and updating crop inventories. (C) 2015 Elsevier Inc. All rights reserved.
机译:卫星图像时间序列(SITS)提供了频谱时态特征,描述了整个生长季节植被的物候变化,有望促进作物类型的分类。尽管大多数基于SITS的作物类型分类都集中在NDVI(归一化差异植被指数)时间剖面上,但使用时间序列的完整图像光谱分辨率却很少受到关注。在这项工作中,我们评估了2013-14生长季节智利中部迈坡谷四种主要果树作物基于SITS分类的不同方法。我们比较了由八个无云Landsat-8图像组成的时间序列中的四个特征集:全波段SITS,NDVI和NDWI(归一化差异水指数)时间概况,以及将所有特征集组合在一起的图像堆栈。在每个特征集上以不同的训练样本大小(N = 100、200、400、800和2291场)应用最新的分类器(线性判别分析,LDA;随机森林和支持向量机),以及分类结果通过误分类错误率(MER)的交叉验证进行评估。对于所有功能集,总体结果都很好(MERs <= 0.21),但是当使用全波段SITS(MER 0.14-0.05)时,分类准确度得到了显着提高。 NDVI时间剖面上应用的分类始终表现最差。对于200个字段的样本量,使用图像日期为1、3、6和8的全波段SITS的LDA在图像数量和分类精度(MER = 0.06)之间产生了最佳折衷,分别为绿色,红色,蓝色影像日期1(在绿化初期获取)的SWIR(短波红外)波段与作物类型判别最相关。我们的结果表明,对于基于SITS的作物类型分类,考虑完整图像光谱分辨率的重要性非常重要,因为常用的NDVI时间剖面及其红色和近红外波段并未被发现来区分感兴趣的作物类型。此外,鉴于获得的良好结果,此处使用的方法可能会转移到使用相同作物类型耕种的类似农田,从而为创建和更新作物清单提供了可靠且相对有效的方法。 (C)2015 Elsevier Inc.保留所有权利。

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