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基于多模态深度学习的番茄水分状况检测研究

Study on the detection of water status of tomato ( L.) by multimodal deep learning.

作者信息

Zuo Zhiyu, Mu Jindong, Li Wenjie, Bu Quan, Mao Hanping, Zhang Xiaodong, Han Lvhua, Ni Jiheng

机构信息

School of Agricultural Engineering, Jiangsu University, Zhenjiang, China.

Key Laboratory of Modern Agricultural Equipment and Technology, Ministry of Education/High-tech Key Laboratory of Agricultural Equipment and Intelligence of Jiangsu Province, Jiangsu University, Zhenjiang, China.

出版信息

Front Plant Sci. 2023 May 31;14:1094142. doi: 10.3389/fpls.2023.1094142. eCollection 2023.

Abstract

Water plays a very important role in the growth of tomato ( L.), and how to detect the water status of tomato is the key to precise irrigation. The objective of this study is to detect the water status of tomato by fusing RGB, NIR and depth image information through deep learning. Five irrigation levels were set to cultivate tomatoes in different water states, with irrigation amounts of 150%, 125%, 100%, 75%, and 50% of reference evapotranspiration calculated by a modified Penman-Monteith equation, respectively. The water status of tomatoes was divided into five categories: severely irrigated deficit, slightly irrigated deficit, moderately irrigated, slightly over-irrigated, and severely over-irrigated. RGB images, depth images and NIR images of the upper part of the tomato plant were taken as data sets. The data sets were used to train and test the tomato water status detection models built with single-mode and multimodal deep learning networks, respectively. In the single-mode deep learning network, two CNNs, VGG-16 and Resnet-50, were trained on a single RGB image, a depth image, or a NIR image for a total of six cases. In the multimodal deep learning network, two or more of the RGB images, depth images and NIR images were trained with VGG-16 or Resnet-50, respectively, for a total of 20 combinations. Results showed that the accuracy of tomato water status detection based on single-mode deep learning ranged from 88.97% to 93.09%, while the accuracy of tomato water status detection based on multimodal deep learning ranged from 93.09% to 99.18%. The multimodal deep learning significantly outperformed the single-modal deep learning. The tomato water status detection model built using a multimodal deep learning network with ResNet-50 for RGB images and VGG-16 for depth and NIR images was optimal. This study provides a novel method for non-destructive detection of water status of tomato and gives a reference for precise irrigation management.

摘要

水分在番茄(L.)生长过程中起着非常重要的作用,如何检测番茄的水分状况是精准灌溉的关键。本研究的目的是通过深度学习融合RGB、近红外(NIR)和深度图像信息来检测番茄的水分状况。设置了五个灌溉水平来培育处于不同水分状态的番茄,灌溉量分别为通过改进的彭曼-蒙特斯方程计算得到的参考蒸散量的150%、125%、100%、75%和50%。番茄的水分状况分为五类:严重灌溉不足、轻度灌溉不足、适度灌溉、轻度过度灌溉和严重过度灌溉。以番茄植株上部的RGB图像、深度图像和近红外图像作为数据集。这些数据集分别用于训练和测试使用单模态和多模态深度学习网络构建的番茄水分状况检测模型。在单模态深度学习网络中,两个卷积神经网络(CNNs),即VGG - 16和Resnet - 50,分别在单张RGB图像、深度图像或近红外图像上进行训练,共六种情况。在多模态深度学习网络中,分别使用VGG - 16或Resnet - 50对RGB图像、深度图像和近红外图像中的两种或更多种进行训练,共20种组合。结果表明,基于单模态深度学习的番茄水分状况检测准确率在88.97%至93.09%之间,而基于多模态深度学习的番茄水分状况检测准确率在93.09%至99.18%之间。多模态深度学习明显优于单模态深度学习。使用针对RGB图像采用ResNet - 50且针对深度图像和近红外图像采用VGG - 16的多模态深度学习网络构建的番茄水分状况检测模型是最优的。本研究为番茄水分状况的无损检测提供了一种新方法,并为精准灌溉管理提供了参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1dd6/10264697/08ac289b5664/fpls-14-1094142-g001.jpg

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