基于谱域和时域深度CNN学习的Sentinel-2数据水稻品种映射

Yiqing Guo, X. Jia, D. Paull
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引用次数: 5

摘要

利用遥感影像时间序列生成水稻品种分布图,为水稻农田的智能管理和灌溉用水的精确预算提供了有意义的信息。然而,由于不同的水稻品种具有高度相似的光谱/时间模式,因此区分一个品种与另一个品种非常具有挑战性。在本研究中,深度卷积神经网络(deep CNN)在谱域和时间域都被构造。目的是从光谱反射特性和生长物候等方面了解各水稻品种的优良特征,这是农业智能化的新尝试。在2016 - 2017年水稻生长季节,在澳大利亚新南威尔士州西南部的一个主要水稻种植区进行了试验。根据水稻品种分布的地面参考图,收集了100多万个标记样本。研究区目前种植的5个水稻品种分别是Reiziq、Sherpa、Topaz、YRM 70和Langi。以Sentinel-2A卫星上的多光谱仪(Multispectral Instrument, MSI)记录的多时相遥感影像时序为输入。这些图像覆盖了从2016年11月到2017年5月的整个水稻生长季节。实验结果表明,该方法的总体准确率为92.87%,优于标准支持向量机分类器的57.49%。夏尔巴品种的生产者准确率最高(98.46%),雷兹克品种的使用者准确率最高(97.93%)。本文所提出的深度CNN学习的结果为未来应用遥感图像时间序列进行水稻品种定位提供了前景。
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Mapping of Rice Varieties with Sentinel-2 Data via Deep CNN Learning in Spectral and Time Domains
Generating rice variety distribution maps with remote sensing image time series provides meaningful information for intelligent management of rice farms and precise budgeting of irrigation water. However, as different rice varieties share highly similar spectral/temporal patterns, distinguishing one variety from another is highly challenging. In this study, a deep convolutional neural network (deep CNN) is constructed in both spectral and time domains. The purpose is to learn the fine features of each rice variety in terms of its spectral reflectance characteristics and growing phenology, which is a new attempt aiming for agriculture intelligence. An experiment was conducted at a major rice planting area in southwest New South Wales, Australia, during the 2016–17 rice growing season. Based on a ground reference map of rice variety distribution, more than one million labelled samples were collected. Five rice varieties currently grown in the study area are investigated and they are Reiziq, Sherpa, Topaz, YRM 70, and Langi. A time series of multitemporal remote sensing images recorded by the Multispectral Instrument (MSI) on-board the Sentinel-2A satellite was used as inputs. These images covered the entire rice growing season from November 2016 to May 2017. Experimental results showed that a good overall accuracy of 92.87% was achieved with the proposed approach, outperforming a standard support vector machine classifier that produced an accuracy of 57.49%. The Sherpa variety showed the highest producer's accuracy (98.46%), while the highest user's accuracy was observed for the Reiziq variety (97.93%). The results obtained with the proposed deep CNN learning provide the prospect of applying remote sensing image time series for rice variety mapping in an operational context in future.
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