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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automated crop field extraction from multi-temporal Web Enabled Landsat Data
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Automated crop field extraction from multi-temporal Web Enabled Landsat Data

机译:从基于Web的多时态Landsat数据中自动提取作物田

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An automated computational methodology to extract agricultural crop fields from 30 m Web Enabled Landsat data (WELD) time series is presented. The results for three 150 × 150 kmWELD tiles encompassing rectangular, circular (center-pivot irrigation) and irregularly shaped fields in Texas, California and South Dakota are presented and compared to independent United States Department of Agriculture (USDA) National Agricultural Statistics Service (NASS) cropland data layer (CDL) classifications. Coherent fields that are visually apparent were extracted with relatively limited apparent errors of omission or commission compared to the CDL classifications. This is due to several factors. First, the use ofmulti-temporal Landsat data, as opposed to single Landsat acquisitions, that enables crop rotations and inter-annual variability in the state of the vegetation to be accommodated for and provides more opportunities for cloud-free, non-missing and atmospherically uncontaminated surface observations. Second, the adoption of an object-based approach, namely the variational region-based geometric active contour method that enables robust segmentation with only a small number of parameters and that requires no training data. Third, the use of a watershed algorithmto decompose connected segments belonging to multiple fields into coherent isolated field segments and a geometry-based algorithm to detect and associate parts of circular fields together. A preliminary validation is presented to gain quantitative insights into the field extraction accuracy and to prototype a validation protocol including new geometric measures that quantify the accuracy of individual field objects. Implications and recommendations for future research and large-area applications are discussed.
机译:提出了一种自动计算方法,该方法可从30 m启用Web的Landsat数据(WELD)时间序列中提取农作物田地。呈现了三个150×150 kmWELD瓷砖的结果,这些瓷砖包括德克萨斯州,加利福尼亚州和南达科他州的矩形,圆形(中心点灌溉)和不规则形状的田地,并将其与独立的美国农业部(USDA)国家农业统计局(NASS)进行了比较。 )农田数据层(CDL)分类。与CDL分类相比,在视觉上明显的相干字段具有相对有限的遗漏或委托误差。这是由于几个因素。首先,与单次Landsat采集相反,使用多时态Landsat数据可以适应作物轮作和植被状况的年际变化,并为无云,不丢失和大气层提供更多机会未经污染的表面观察。其次,采用基于对象的方法,即基于变分区域的几何活动轮廓方法,该方法仅需少量参数即可进行鲁棒分割,并且不需要训练数据。第三,使用分水岭算法将属于多个场的连接段分解为相干的隔离场段,并使用基于几何的算法将圆形场的各个部分检测并关联在一起。提出了初步验证,以获取对现场提取精度的定量见解,并为验证协议提供原型,该协议包括对各个现场物体的精度进行量化的新几何度量。讨论了对未来研究和大面积应用的启示和建议。

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