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Particle Swarm Optimization Based Support Vector Machine (P-SVM) for the Segmentation and Classification of Plants

机译:基于粒子群优化的支持向量机(P-SVM)用于分割和植物分类

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摘要

With the rapid growth in urbanization and population, it has become an earnest task to nurture and grow plants that are both important in sustaining the nature and the living beings needs. In addition, there is a need for preserving the plants having global importance both economically and environmentally. Locating such species from the forest or shrubs having human involvement is a time consuming and costly task to perform. Therefore, in this paper, a novel method is presented for the segmentation and classification of the seven different plants, named Guava, Jamun, Mango, Grapes, Apple, Tomato, and Arjun, based on their leaf images. In the first phase, both real-time images and images from the crowdAI database are collected and preprocessed for noise removal, resizing, and contrast enhancement. Then, in the second phase, different features are extracted based on color and texture. The third phase includes the segmentation of images using a k-means algorithm. The fourth phase consists of the training of support vector machine, and finally, in the last phase, the testing is performed. Particle swarm optimization algorithm is used for selecting the best possible value of the initialization parameter in both the segmentation and classification processes. The proposed work achieves higher experimental results, such as sensitivity = 0.9581, specificity = 0.9676, and accuracy = 0.9759, for segmentation and classification accuracy = 95.23 when compared with other methods.
机译:随着城市化和人口的快速增长,它已成为培育和种植在维持性质和生物需求方面很重要的植物的认真任务。此外,还需要保留具有经济和环境的全球重要性的植物。从森林或具有人类参与的灌木中定位这些物种是耗时和成本昂贵的执行。因此,本文提出了一种基于叶片图像的七种不同植物的分割和分类,名为番石榴,番茄,芒果,葡萄,苹果,番茄和arjun的新方法。在第一阶段,收集来自Crowdai数据库的实时图像和图像,并预处理用于噪声,调整大小和对比度增强。然后,在第二阶段,基于颜色和纹理提取不同的特征。第三阶段包括使用K-means算法的图像分割。第四阶段包括支持向量机的训练,最后,在最后阶段,执行测试。粒子群优化算法用于在分段和分类过程中选择初始化参数的最佳值。所提出的工作实现更高的实验结果,例如灵敏度= 0.9581,特异性= 0.9676,以及精度= 0.9759,与其他方法相比,分割和分类精度= 95.23。

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