Sustainable Leaf Plant Disease Based on Salp Swarm Algorithm for Feature Selection

Authors

  • Hamsa E. d Mahmoo Department of Computer Sciences, University of Technology, Baghdad, Iraq
  • Yossra H. Ali Department of Computer Sciences, University of Technology, Baghdad, Iraq
  • Tarik A. Rashed Computer Science and Engineering, University of Kurdistan Howler, Erbil, KR, Iraq
  • Janmenjoy Nayak Department of CS, MSCB University, Odisha, 757003 India

DOI:

https://doi.org/10.37934/ard.137.1.210222

Keywords:

Leaf, Plant Disease, Salp Swarm Algorithm

Abstract

Sustainable plant protection and the economy of plant crops worldwide depend heavily on the health of agriculture. In the modern world, one of the main factors influencing economic growth is the quality of agricultural produce. The need for future crop protection and production is growing as disease-affected plants have caused considerable agricultural losses in several crop categories. The crop yield must be increased while preserving food quality and security and having the most negligible negative environmental impact. To overcome these obstacles, early discovery of satisfactory plants is critical. The use of Advances in Intelligent Systems and information computer science effectively helps find more efficient and low-cost solutions. This paper proposed a multiclass classification model that aims to detect diseases in three types of fruit using the leaves plant images dataset. These three types of fruit are (Apple, Cherry, and Strawberry) where Apples have three disease dataset categories (Apple Scab, Black Rot, and  Cedar Rust) as well as healthy apple dataset, Cherry have Powdery Mildew disease dataset category and healthy dataset, and Strawberry have leaf Scorch disease dataset category and healthy dataset. These datasets are based on the Kaggle website. These multiclass classifications need several steps of processing; the first step is preprocessing the dataset by resizing all images to the same size, segmentation, and removing noise; then, feature extraction from color and texture features; the next step is feature selection to find optimal features by using the Salp Swarm algorithm (SSA); and classification by using machine learning models (Random Forest), (CatBoost), and (XGBoost). In the final step, evaluation of the performance was used to select several matrices: Accuracy, precision, recall, and F1-score.

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Author Biography

Hamsa E. d Mahmoo, Department of Computer Sciences, University of Technology, Baghdad, Iraq

cs.22.02@grad.uotechnology.edu.iq

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Published

2025-08-13

How to Cite

Mahmoo, H. E. d ., Ali, Y. H. ., Rashed, T. A. ., & Nayak, J. . (2025). Sustainable Leaf Plant Disease Based on Salp Swarm Algorithm for Feature Selection. Journal of Advanced Research Design, 137(1), 210–222. https://doi.org/10.37934/ard.137.1.210222
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