Nutrient Stress Symptom Detection in Cucumber Seedlings Using Segmented Regression and a Mask Region-Based Convolutional Neural Network Model
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Published:2024-08-17
Issue:8
Volume:14
Page:1390
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ISSN:2077-0472
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Container-title:Agriculture
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language:en
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Short-container-title:Agriculture
Author:
Islam Sumaiya1ORCID, Reza Md Nasim12ORCID, Ahmed Shahriar2ORCID, Samsuzzaman 2, Lee Kyu-Ho12, Cho Yeon Jin3, Noh Dong Hee4, Chung Sun-Ok12ORCID
Affiliation:
1. Department of Smart Agricultural Systems, Graduate School, Chungnam National University, Daejeon 34134, Republic of Korea 2. Department of Agricultural Machinery Engineering, Graduate School, Chungnam National University, Daejeon 34134, Republic of Korea 3. Jeonnam Agricultural Research and Extension Services, Naju 58213, Republic of Korea 4. Jeonbuk Regional Branch, Korea Electronics Technology Institute (KETI), Jeonju 54853, Republic of Korea
Abstract
The health monitoring of vegetable and fruit plants, especially during the critical seedling growth stage, is essential to protect them from various environmental stresses and prevent yield loss. Different environmental stresses may cause similar symptoms, making visual inspection alone unreliable and potentially leading to an incorrect diagnosis and delayed corrective actions. This study aimed to address these challenges by proposing a segmented regression model and a Mask R-CNN model for detecting the initiation time and symptoms of nutrient stress in cucumber seedlings within a controlled environment. Nutrient stress was induced by applying two different treatments: an indicative nutrient deficiency with an electrical conductivity (EC) of 0 dSm−1, and excess nutrients with a high-concentration nutrient solution and an EC of 6 dSm−1. Images of the seedlings were collected using an automatic image acquisition system two weeks after germination. The early initiation of nutrient stress was detected using a segmented regression analysis, which analyzed morphological and textural features extracted from the images. For the Mask R-CNN model, 800 seedling images were annotated based on the segmented regression analysis results. Nutrient-stressed seedlings were identified from the initiation day to 4.2 days after treatment application. The Mask R-CNN model, implemented using ResNet-101 for feature extraction, leveraged transfer learning to train the network with a smaller dataset, thereby reducing the processing time. This study identifies the top projected canopy area (TPCA), energy, entropy, and homogeneity as prospective indicators of nutritional deficits in cucumber seedlings. The results from the Mask R-CNN model are promising, with the best-fit image achieving an F1 score of 93.4%, a precision of 93%, and a recall of 94%. These findings demonstrate the effectiveness of the integrated statistical and machine learning (ML) methods for the early and accurate diagnosis of nutrient stress. The use of segmented regression for initial detection, followed by the Mask R-CNN for precise identification, emphasizes the potential of this approach to enhance agricultural practices. By facilitating the early detection and accurate diagnosis of nutrient stress, this approach allows for quicker and more precise treatments, which improve crop health and productivity. Future research could expand this methodology to other crop types and field conditions to enhance image processing techniques, and researchers may also integrate real-time monitoring systems.
Funder
Chungnam National University, Daejeon, Republic of Korea
Reference79 articles.
1. FAO (2024, March 11). The State of Food Security and Nutrition in the World 2021—Transforming Food Systems for Food Security, Improved Nutrition and Affordable Healthy Diets for All, Food and Agriculture Organization of the United Nations. Available online: https://www.fao.org/documents/card/en/c/cb4474en. 2. Effect of integrated nutrient management on growth, flowering and yield attributes of cucumber (Cucumis sativus L.);Singh;Int. J. Chem. Stud.,2018 3. Growth, yield and quality parameters of cucumber (Cucumis sativus L.) as influenced by integrated nutrient management application;Singh;Int. J. Curr. Microbiol. App. Sci.,2020 4. Physiological and growth responses of two different salt-sensitive cucumber cultivars to NaCl stress;Zhu;Soil Sci. Plant Nutr.,2008 5. Bukhari, S.A., Peerzada, A.M., Javed, M.H., Dawood, M., Hussain, N., and Ahmad, S. (2019). Growth and Development Dynamics in Agronomic Crops under Environmental Stress, Springer.
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