Extracting Trusted Pixels from Historical Cropland Data Layer Using Crop Rotation Patterns: A Case Study in Nebraska, USA

Chen Zhang, L. Di, Li Lin, Liying Guo
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引用次数: 15

Abstract

It is still a challenge to generate the timely crop cover map at large geographic area due to the lack of reliable ground truths at early growing season. This paper introduces an efficient method to extract “trusted pixels” from the historical Cropland Data Layer (CDL) data using crop rotation patterns, which can be used to replace the actual ground truth in the crop mapping and other agricultural applications. A case study in the Nebraska state of USA is demonstrated. The common crop rotation patterns of four major crop types, corn, soybeans, winter wheat, and alfalfa, are compared and analyzed. The experiment results show a considerable number of pixels in CDL following the certain crop sequence during the past decade. Each observed crop type has at least one reliable crop rotation pattern. Based on the reliable crop rotation patterns, a great proportion of pixels can be correctly mapped a year ahead of the release of current-year CDL product. These trusted pixels can be potentially used to label training samples for crop type classification at early growing season.
利用作物轮作模式从历史农田数据层提取可信像素:以美国内布拉斯加州为例
由于生长初期缺乏可靠的地面数据,在大地理范围内及时生成作物覆盖图仍然是一个挑战。本文介绍了一种利用作物轮作模式从历史耕地数据层(CDL)数据中提取“可信像素”的有效方法,该方法可用于替代作物制图和其他农业应用中的实际地面真实值。以美国内布拉斯加州为例进行了实证研究。对玉米、大豆、冬小麦和苜蓿4种主要作物类型的轮作模式进行了比较分析。实验结果表明,在过去的十年中,CDL中有相当数量的像元遵循一定的裁剪顺序。每一种观测到的作物类型至少有一种可靠的作物轮作模式。基于可靠的作物轮作模式,可以在当年CDL产品发布前一年正确绘制出很大比例的像素。这些可信像素可以潜在地用于标记训练样本,以便在早期生长季节进行作物类型分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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