Image Processing and Support Vector Machine (SVM) for Classifying Environmental Stress Symptoms of Pepper Seedlings Grown in a Plant Factory

Agronomy Pub Date : 2024-09-06 DOI:10.3390/agronomy14092043
Sumaiya Islam, Samsuzzaman, Md Nasim Reza, Kyu-Ho Lee, Shahriar Ahmed, Yeon Jin Cho, Dong Hee Noh, Sun-Ok Chung
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Abstract

Environmental factors such as temperature, humidity, light, and CO2 influence plant growth, and unfavorable environmental conditions cause stress in plants, producing symptoms in their early growth stages. The increasing importance of optimizing crop management strategies has led to a rising demand for the precise evaluation of stress symptoms during early plant growth. Advanced technologies are transforming plant health monitoring through enabling image-based stress analysis. Machine learning (ML) models can effectively identify the important features and morphological changes connected with various stress conditions through the use of large datasets acquired from high-resolution plant images. Therefore, the objective of this study was to develop a method for classifying the early-stage stress symptoms of pepper seedlings and enabling their identification and quantification using image processing and a support vector machine (SVM). Two-week-old pepper seedlings were grown under different temperatures (20, 25, and 30 °C), light intensity levels (50, 250, and 450 µmol m−2s−1), and day–night hours (8/16, 10/14, and 16/8) in five controlled plant growth chambers. Images of the seedling canopies were captured daily using a low-cost red, green, and blue (RGB) camera over a two-week period. Eighteen color features, nine texture features using the gray-level co-occurrence matrix (GLCM), and one morphological feature were extracted from each image. A two-way ANOVA and multiple mean comparison (Duncan) analysis were used to determine the statistical significance of the treatment effects. To reduce feature overlap, sequential feature selection (SFS) was applied, and a support vector machine (SVM) was used for stress classification. The SFS method was used to identify the optimal features for the classification model, leading to substantial increases in stress classification accuracy. The SVM model, using these selected features, achieved a classification accuracy of 82% without the SFS and 86% with the SFS. To address overfitting, 5- and 10-fold cross-validation were used, resulting in MAEs of 0.138 and 0.163 for the polynomial kernel, respectively. The SVM model, evaluated with the ROC curve and confusion matrix, achieved a classification accuracy of 85%. This classification approach enables real-time stress monitoring, allowing growers to optimize environmental conditions and enhance seedling growth. Future directions include integrating this system into automated cultivation environments to enable continuous, efficient stress monitoring and response, further improving crop management and productivity.
利用图像处理和支持向量机 (SVM) 对植物工厂种植的辣椒幼苗的环境胁迫症状进行分类
温度、湿度、光照和二氧化碳等环境因素会影响植物的生长,不利的环境条件会对植物造成胁迫,在其早期生长阶段产生症状。优化作物管理策略的重要性与日俱增,这导致对植物生长早期胁迫症状精确评估的需求不断上升。通过基于图像的胁迫分析,先进技术正在改变植物健康监测。通过使用从高分辨率植物图像中获取的大量数据集,机器学习(ML)模型可以有效识别与各种胁迫条件相关的重要特征和形态变化。因此,本研究旨在开发一种方法,利用图像处理和支持向量机(SVM)对辣椒幼苗的早期胁迫症状进行分类,并对其进行识别和量化。在不同温度(20、25 和 30 °C)、光照强度水平(50、250 和 450 µmol m-2s-1)和昼夜时间(8/16、10/14 和 16/8)条件下,在五个受控植物生长室中培育两周大的辣椒幼苗。在为期两周的时间里,每天使用低成本的红绿蓝(RGB)相机拍摄幼苗树冠的图像。从每张图像中提取了 18 个颜色特征、9 个使用灰度级共现矩阵 (GLCM) 的纹理特征和 1 个形态特征。采用双向方差分析和多均值比较(Duncan)分析来确定处理效果的统计学意义。为减少特征重叠,采用了序列特征选择(SFS),并使用支持向量机(SVM)进行应力分类。SFS 方法用于确定分类模型的最佳特征,从而大大提高了应力分类的准确性。使用这些选定特征的 SVM 模型,在不使用 SFS 的情况下,分类准确率达到 82%,使用 SFS 的情况下,分类准确率达到 86%。为了解决过拟合问题,使用了 5 倍和 10 倍交叉验证,结果多项式核的 MAE 分别为 0.138 和 0.163。通过 ROC 曲线和混淆矩阵对 SVM 模型进行评估,分类准确率达到了 85%。这种分类方法可实现实时胁迫监测,使种植者能够优化环境条件,促进秧苗生长。未来的发展方向包括将该系统集成到自动化栽培环境中,以实现持续、高效的胁迫监测和响应,进一步提高作物管理水平和生产力。
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