Yield prediction through UAV-based multispectral imaging and deep learning in rice breeding trials

IF 6.1 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Agricultural Systems Pub Date : 2024-11-30 DOI:10.1016/j.agsy.2024.104214
Hongkui Zhou , Fudeng Huang , Weidong Lou , Qing Gu , Ziran Ye , Hao Hu , Xiaobin Zhang
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引用次数: 0

Abstract

Context

Predicting crop yields with high precision and timeliness is essential for crop breeding, enabling the optimization of planting strategies and efficients resource allocation while ensuring food security. Current research in this field typically does not address the problem of yield prediction in the diverse context of breeding experiments involving numerous varieties. However, evaluating the performance of prediction models across multiple varieties is vital for further model refining and enhancing model robustness and adaptability.

Objective

This study aims to evaluate the performance of feature- and image-based yield prediction models for yields with multiple varieties to compare their capabilities and determine an appropriate timing for early yield prediction.

Methods

This study combines unmanned aerial vehicle (UAV)-based multispectral remote sensing imagery with machine learning and deep learning-based algorithms to develop rice yield prediction models across multiple varieties. The performances of both feature- and image-based models are evaluated. The feature-based models considered in this study include random forest (RF), deep neural network (DNN), and long short-term memory (LSTM) algorithms, and the image-based models are convolutional neural network (CNN) architectures, including both two-dimensional (2D) and three-dimensional (3D) CNN models. To assess the performance of the multi-variety crop yield prediction models thoroughly, this study considers two sampling scenarios: stratified sampling and group sampling.

Results and conclusions

The results show that the image-based deep learning models outperform the feature-based machine learning models, which indicates their superior robustness in multi-variety scenarios and highlights their significant potential of directly extracting spatiotemporal features from images for yield prediction. The results indicate that the multi-temporal 2D CNN model (i.e., the CNN-M2D model) can achieve the best yield prediction performance among all models, achieving RRMSE = 8.13 % and R2 = 0.73. The prediction results also demonstrate good consistency with the observed data, indicating an efficient capturing of spatial pattern variations in yield across different varieties. Based on the results, with the crops progressing along the growth stages, the accuracy of the yield prediction models improves gradually, achieving the best prediction performance during the flowering to grain-filling stage. Finally, according to the results, the optimal lead time for predicting rice yield is approximately one month before harvest.

Significance

Our study can provide a reference for the research community in yield prediction and high-yield variety selection in breeding trials.

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基于无人机多光谱成像和深度学习的水稻育种试验产量预测
高精度、及时性地预测作物产量对作物育种至关重要,有助于优化种植策略和有效分配资源,同时确保粮食安全。目前在这一领域的研究通常没有解决在涉及众多品种的育种实验的不同背景下的产量预测问题。然而,评估多品种预测模型的性能对于进一步完善模型,增强模型的鲁棒性和适应性至关重要。目的评价基于特征和图像的多品种产量预测模型的性能,比较其能力,确定早期产量预测的合适时机。方法将基于无人机(UAV)的多光谱遥感图像与基于机器学习和深度学习的算法相结合,建立多品种水稻产量预测模型。对特征模型和图像模型的性能进行了评价。本研究中考虑的基于特征的模型包括随机森林(RF)、深度神经网络(DNN)和长短期记忆(LSTM)算法,而基于图像的模型是卷积神经网络(CNN)架构,包括二维(2D)和三维(3D) CNN模型。为了全面评估多品种作物产量预测模型的性能,本研究考虑了分层抽样和分组抽样两种抽样情景。结果与结论结果表明,基于图像的深度学习模型优于基于特征的机器学习模型,这表明其在多场景下具有更强的鲁棒性,并突出了其在直接从图像中提取时空特征进行产量预测方面的巨大潜力。结果表明,在所有模型中,多时段二维CNN模型(即CNN- m2d模型)的产量预测性能最好,RRMSE = 8.13%, R2 = 0.73。预测结果与实测数据具有较好的一致性,表明该方法有效地捕捉了不同品种间产量的空间格局变化。结果表明,随着作物生育期的推进,产量预测模型的精度逐渐提高,在开花期至灌浆期预测效果最好。最后,根据结果,预测水稻产量的最佳提前期约为收获前一个月。意义本研究可为育种试验中的产量预测和高产品种选择提供参考。
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来源期刊
Agricultural Systems
Agricultural Systems 农林科学-农业综合
CiteScore
13.30
自引率
7.60%
发文量
174
审稿时长
30 days
期刊介绍: Agricultural Systems is an international journal that deals with interactions - among the components of agricultural systems, among hierarchical levels of agricultural systems, between agricultural and other land use systems, and between agricultural systems and their natural, social and economic environments. The scope includes the development and application of systems analysis methodologies in the following areas: Systems approaches in the sustainable intensification of agriculture; pathways for sustainable intensification; crop-livestock integration; farm-level resource allocation; quantification of benefits and trade-offs at farm to landscape levels; integrative, participatory and dynamic modelling approaches for qualitative and quantitative assessments of agricultural systems and decision making; The interactions between agricultural and non-agricultural landscapes; the multiple services of agricultural systems; food security and the environment; Global change and adaptation science; transformational adaptations as driven by changes in climate, policy, values and attitudes influencing the design of farming systems; Development and application of farming systems design tools and methods for impact, scenario and case study analysis; managing the complexities of dynamic agricultural systems; innovation systems and multi stakeholder arrangements that support or promote change and (or) inform policy decisions.
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