开发基于多模态融合的土壤有机质和土壤含水量在线预测系统

IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Computers and Electronics in Agriculture Pub Date : 2024-10-07 DOI:10.1016/j.compag.2024.109514
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引用次数: 0

摘要

实现田间原位土壤有机质(SOM)含量和土壤水分(SM)含量的精确测定,对于提高农业生产效率具有重要意义。然而,单个传感器的特征信息有限,与传统的实验室方法相比,建模精度仍有一定差距。田间 SM 的变化也会干扰数据采集,限制了单一传感器的应用。为了实现原地 SOM 和 SM 含量的高效检测,本研究开发了基于特征波长、可见光图像和热成像图像特征融合的 SOM 和 SM 含量在线检测系统。首先,基于车载平台,在深松犁中集成了可见光热成像相机和特征波长集成装置,实现了原位土壤多传感器数据的同步采集。然后,构建轻量级多模态网络,通过分支网络获取可见光热成像特征和特征波长特征,实现不同模态数据的深度融合,预测SOM和SM含量。最后,输出 SOM 和 SM 内容的预测结果,并将预测信息传输到云平台进行存储。经验证,本研究提出的多模态在实验室环境中效果最佳,SOM 的预测 R2 为 0.91,RMSE 为 2.9 g/kg;SM 的预测 R2 为 0.92,RMSE 为 0.77 %。与单一图像或特征光谱数据相比,可见光图像与特征波长的融合有效提高了 SOM 的预测精度。通过热成像数据的融合实现了 SM 的实时预测,并借助多模态网络的深度融合消除了可见光图像和特征波长的湿度效应。经过实地验证,多模态系统对 SOM 的 R2 为 0.84,均方根误差为 5.0 g/kg;对 SM 的 R2 为 0.88,均方根误差为 1.03 %。尽管验证田与采样田的土壤类型存在差异,但该系统仍表现出较强的泛化能力,实现了对田间原位 SOM 和 SM 的高精度预测,有效提高了田间试验的效率和适用性。土壤测试的效率和适用性有效提高了田间精准管理的效率,为田间精准管理提供了技术指导。
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Development of an online prediction system for soil organic matter and soil moisture content based on multi-modal fusion
Realizing accurate determination of in situ soil organic matter (SOM) content and soil moisture (SM) content in the field is of great importance for improving agricultural production efficiency. However, the feature information of a single sensor is limited, and there is still a certain gap in modeling accuracy compared to traditional laboratory methods. The variations of SM in the field also interfere with data collection, limiting the application of single sensor. In order to realize the efficient detection of in-situ SOM and SM content, this study developed an online detection system for SOM and SM content based on the fusion of characteristic wavelengths, visible images and thermal imaging image features. Firstly, based on a vehicle-mounted platform, a visible-thermal imaging camera and a characteristic wavelength integration device were integrated in a deep pine plow to realize the simultaneous acquisition of in-situ soil multi-sensor data. Then, a lightweight multimodal network was constructed to obtain thermal visible light image features and characteristic wavelength features through branch networks, achieving deep fusion of different modal data and predicting SOM and SM content. Finally, output the forecasting results of SOM and SM content, and transmit the predictive information to the cloud platform for storage. It was verified that the Multi-modal proposed in this study worked best in the laboratory environment, with a predicted R2 of 0.91 and RMSE of 2.9 g/kg for SOM, and a predicted R2 of 0.92 and RMSE of 0.77 % for SM. Compared with single image or characteristic spectral data, the fusion of visible image and characteristic wavelength effectively improved the prediction accuracy of SOM. The real-time prediction of SM was realized by fusing thermal imaging data, and the elimination of the moisture effect of visible images and characteristic wavelengths was also realized with the help of deep fusion of Multi-modal network. After field validation, the R2 of the Multi-modal system was 0.84 and the RMSE was 5.0 g/kg for SOM, and the R2 of the SM was 0.88 and the RMSE was 1.03 %. Despite the differences in soil types between the validation field and the sampling field, the system still demonstrated strong generalization and achieved high accuracy prediction of in-situ SOM and SM in the field, which effectively improves the efficiency and applicability of field. The efficiency and applicability of soil testing effectively improve the efficiency and provide technical guidance for precision management in the field.
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来源期刊
Computers and Electronics in Agriculture
Computers and Electronics in Agriculture 工程技术-计算机:跨学科应用
CiteScore
15.30
自引率
14.50%
发文量
800
审稿时长
62 days
期刊介绍: Computers and Electronics in Agriculture provides international coverage of advancements in computer hardware, software, electronic instrumentation, and control systems applied to agricultural challenges. Encompassing agronomy, horticulture, forestry, aquaculture, and animal farming, the journal publishes original papers, reviews, and applications notes. It explores the use of computers and electronics in plant or animal agricultural production, covering topics like agricultural soils, water, pests, controlled environments, and waste. The scope extends to on-farm post-harvest operations and relevant technologies, including artificial intelligence, sensors, machine vision, robotics, networking, and simulation modeling. Its companion journal, Smart Agricultural Technology, continues the focus on smart applications in production agriculture.
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