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用于早期作物类型分类的不同数据组合估计。

Estimation of different data compositions for early-season crop type classification.

作者信息

Hao Pengyu, Wu Mingquan, Niu Zheng, Wang Li, Zhan Yulin

机构信息

Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture, Chinese Academy of Agricultural Sciences, China. (AGRIRS)/Institute of Agricultural Resources and Regional Planning, Beiijng, China.

The State Key Laboratory of Remote Sensing Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing, China.

出版信息

PeerJ. 2018 May 28;6:e4834. doi: 10.7717/peerj.4834. eCollection 2018.

Abstract

Timely and accurate crop type distribution maps are an important inputs for crop yield estimation and production forecasting as multi-temporal images can observe phenological differences among crops. Therefore, time series remote sensing data are essential for crop type mapping, and image composition has commonly been used to improve the quality of the image time series. However, the optimal composition period is unclear as long composition periods (such as compositions lasting half a year) are less informative and short composition periods lead to information redundancy and missing pixels. In this study, we initially acquired daily 30 m Normalized Difference Vegetation Index (NDVI) time series by fusing MODIS, Landsat, Gaofen and Huanjing (HJ) NDVI, and then composited the NDVI time series using four strategies (daily, 8-day, 16-day, and 32-day). We used Random Forest to identify crop types and evaluated the classification performances of the NDVI time series generated from four composition strategies in two studies regions from Xinjiang, China. Results indicated that crop classification performance improved as crop separabilities and classification accuracies increased, and classification uncertainties dropped in the green-up stage of the crops. When using daily NDVI time series, overall accuracies saturated at 113-day and 116-day in Bole and Luntai, and the saturated overall accuracies (OAs) were 86.13% and 91.89%, respectively. Cotton could be identified 40∼60 days and 35∼45 days earlier than the harvest in Bole and Luntai when using daily, 8-day and 16-day composition NDVI time series since both producer's accuracies (PAs) and user's accuracies (UAs) were higher than 85%. Among the four compositions, the daily NDVI time series generated the highest classification accuracies. Although the 8-day, 16-day and 32-day compositions had similar saturated overall accuracies (around 85% in Bole and 83% in Luntai), the 8-day and 16-day compositions achieved these accuracies around 155-day in Bole and 133-day in Luntai, which were earlier than the 32-day composition (170-day in both Bole and Luntai). Therefore, when the daily NDVI time series cannot be acquired, the 16-day composition is recommended in this study.

摘要

及时准确的作物类型分布图是作物产量估算和生产预测的重要输入数据,因为多时相图像可以观测到作物之间的物候差异。因此,时间序列遥感数据对于作物类型制图至关重要,图像合成通常用于提高图像时间序列的质量。然而,最佳合成周期尚不清楚,因为长合成周期(如持续半年的合成)信息量较少,而短合成周期会导致信息冗余和像素缺失。在本研究中,我们首先通过融合MODIS、Landsat、高分和环境一号(HJ)的归一化植被指数(NDVI)获取了每日30米的NDVI时间序列,然后使用四种策略(每日、8天、16天和32天)对NDVI时间序列进行合成。我们使用随机森林识别作物类型,并在中国新疆的两个研究区域评估了由四种合成策略生成的NDVI时间序列的分类性能。结果表明,随着作物可分性和分类精度的提高以及分类不确定性在作物返青期的降低,作物分类性能得到改善。在博乐和轮台,使用每日NDVI时间序列时,总体精度分别在113天和116天达到饱和,饱和总体精度分别为86.13%和91.89%。使用每日、8天和16天合成的NDVI时间序列时,棉花在博乐和轮台可比收获期提前40至60天和35至45天被识别出来,因为生产者精度(PAs)和用户精度(UAs)均高于85%。在四种合成中,每日NDVI时间序列产生的分类精度最高。虽然8天、16天和32天的合成具有相似的饱和总体精度(博乐约为85%,轮台约为83%),但8天和16天的合成在博乐约155天、轮台约133天达到这些精度,早于32天的合成(博乐和轮台均为170天)。因此,当无法获取每日NDVI时间序列时,本研究建议采用16天合成。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d53/5978390/8439c44a5215/peerj-06-4834-g001.jpg

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