基于无人机多时相特征改进的粳稻产量预测方法

IF 5.6 2区 农林科学 Q1 AGRONOMY
Zhou Longfei , Meng Ran , Yu Xing , Liao Yigui , Huang Zehua , Lü Zhengang , Xu Binyuan , Yang Guodong , Peng Shaobing , Xu Le
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引用次数: 2

摘要

冬稻收获前产量预测对指导精准农业作物干预具有重要意义。然而,水稻再生过程中独特的农艺措施(即不同茬高处理)可能导致水稻物候不一致,这对再生水稻的产量预测有重要影响。与以往的方法相比,基于无人机(UAV)的多时段遥感技术可以监测旱稻的生产力,并反映整个生长季节的最大产量潜力,从而改进产量预测。因此,本研究探讨了结合农艺实践信息(API)和单相、多光谱特征[植被指数(VIs)和纹理(Tex)特征]预测再生稻产量的性能,并开发了一种基于无人机的利用多时相特征检索再生稻产量形成过程的新方法,有效提高了再生稻产量预测精度。结果表明,VIs、Tex和API (VIs &Tex + API)比基于单相无人机图像的特征提高了产量预测的精度,其中穗萌发期是产量预测的最佳时期(R2为0.732,RMSE为0.406,RRMSE为0.101)。更重要的是,与以往基于无人机的多时相方法相比,我们提出的多时相方法(多时相模型VIs &Tex: R2 = 0.795, RMSE = 0.298, RRMSE = 0.072)可使作物产量预测R2提高0.020 ~ 0.111,RMSE降低0.020 ~ 0.080。本研究为精准农业中再生稻收获前产量的准确预测提供了一种有效方法,对及时采取措施保障再生稻生产和粮食安全具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Yield Prediction of Ratoon Rice Using Unmanned Aerial Vehicle-Based Multi-Temporal Feature Method

Pre-harvest yield prediction of ratoon rice is critical for guiding crop interventions in precision agriculture. However, the unique agronomic practice (i.e., varied stubble height treatment) in rice ratooning could lead to inconsistent rice phenology, which had a significant impact on yield prediction of ratoon rice. Multi-temporal unmanned aerial vehicle (UAV)-based remote sensing can likely monitor ratoon rice productivity and reflect maximum yield potential across growing seasons for improving the yield prediction compared with previous methods. Thus, in this study, we explored the performance of combination of agronomic practice information (API) and single-phase, multi-spectral features [vegetation indices (VIs) and texture (Tex) features] in predicting ratoon rice yield, and developed a new UAV-based method to retrieve yield formation process by using multi-temporal features which were effective in improving yield forecasting accuracy of ratoon rice. The results showed that the integrated use of VIs, Tex and API (VIs & Tex + API) improved the accuracy of yield prediction than single-phase UAV imagery-based feature, with the panicle initiation stage being the best period for yield prediction (R2 as 0.732, RMSE as 0.406, RRMSE as 0.101). More importantly, compared with previous multi-temporal UAV-based methods, our proposed multi- temporal method (multi-temporal model VIs & Tex: R2 as 0.795, RMSE as 0.298, RRMSE as 0.072) can increase R2 by 0.020–0.111 and decrease RMSE by 0.020–0.080 in crop yield forecasting. This study provides an effective method for accurate pre-harvest yield prediction of ratoon rice in precision agriculture, which is of great significance to take timely means for ensuring ratoon rice production and food security.

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来源期刊
Rice Science
Rice Science Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
8.90
自引率
6.20%
发文量
55
审稿时长
40 weeks
期刊介绍: Rice Science is an international research journal sponsored by China National Rice Research Institute. It publishes original research papers, review articles, as well as short communications on all aspects of rice sciences in English language. Some of the topics that may be included in each issue are: breeding and genetics, biotechnology, germplasm resources, crop management, pest management, physiology, soil and fertilizer management, ecology, cereal chemistry and post-harvest processing.
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