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

Project Code :TMMAAI25

Abstract

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 crowdie 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 D 0.9581, specificity D 0.9676, and accuracy D 0.9759, for segmentation and classification accuracy D 95.23 when compared with other methods.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

24/7 Support, Voice Conference, Video On Demand, Remote Connectivity, Customization, Live Chat Support

Demo Video

mail-banner
call-banner
contact-banner
Request Video