Multimodal Deep Learning for Rice Yield Prediction Using UAV-Based Multispectral Imagery and Weather Data

Remote. Sens. Pub Date : 2023-05-10 DOI:10.3390/rs15102511
Md. Suruj Mia, Ryoya Tanabe, Luthfan Nur Habibi, Naoyuki Hashimoto, K. Homma, M. Maki, T. Matsui, Takashi S. T. Tanaka
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引用次数: 2

Abstract

Precise yield predictions are useful for implementing precision agriculture technologies and making better decisions in crop management. Convolutional neural networks (CNNs) have recently been used to predict crop yields in unmanned aerial vehicle (UAV)-based remote sensing studies, but weather data have not been considered in modeling. The aim of this study was to explore the potential of multimodal deep learning on rice yield prediction accuracy using UAV multispectral images at the heading stage, along with weather data. The effects of the CNN architectures, layer depths, and weather data integration methods on the prediction accuracy were evaluated. Overall, the multimodal deep learning model integrating UAV-based multispectral imagery and weather data had the potential to develop more precise rice yield predictions. The best models were those trained with weekly weather data. A simple CNN feature extractor for UAV-based multispectral image input data might be sufficient to predict crop yields accurately. However, the spatial patterns of the predicted yield maps differed from model to model, although the prediction accuracy was almost the same. The results indicated that not only the prediction accuracies, but also the robustness of within-field yield predictions, should be assessed in further studies.
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基于无人机的多光谱图像和天气数据的水稻产量预测多模态深度学习
精确的产量预测有助于实施精准农业技术和在作物管理中做出更好的决策。卷积神经网络(cnn)最近被用于基于无人机(UAV)的遥感研究中预测作物产量,但在建模中没有考虑天气数据。本研究的目的是利用无人机在抽穗阶段的多光谱图像以及天气数据,探索多模态深度学习在水稻产量预测精度方面的潜力。评估了CNN体系结构、层深度和气象数据集成方法对预测精度的影响。总体而言,集成基于无人机的多光谱图像和天气数据的多模态深度学习模型有可能开发更精确的水稻产量预测。最好的模型是那些用每周天气数据训练的模型。对于基于无人机的多光谱图像输入数据,一个简单的CNN特征提取器可能足以准确预测作物产量。不同模型预测产量图的空间格局不同,但预测精度基本一致。结果表明,在进一步的研究中,不仅要评估预测的准确性,还要评估田内产量预测的稳健性。
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