Disease Detection of Cotton Leaves Using Advanced Image Processing
Journal: International Journal of Advanced Computer Research (IJACR) (Vol.4, No. 15)Publication Date: 2014-06-17
Authors : Vivek Chaudhari; C. Y. Patil;
Page : 653-659
Keywords : Pre-processing; Segmentation; Wavelet transform; k-mean clustering; Neural network.;
Abstract
In this research, identification and classification of cotton diseases is done. The pattern of disease is important part where some features like the colour of actual infected image are extracted from image. There are so many diseases occurred on cotton leaf so the leaf color is different for different diseases. This paper uses k-mean clustering with Discrete Wavelet Transform for efficient plant leaf image segmentation and classification between normal & diseased images using neural network technique. Segmentation is basic pre-processing task in image processing applications and it is required to extract diseased plant leaf from normal plant leaf image and image background. Image segmentation is necessary to detect objects and borderlines in images. Even though different methods are already proposed, it is still hard to accurately segment a random image by one specific method. In last years, additional attention has been given to merge segmentation algorithm and feature extraction algorithm to enhance segmentation results.
Other Latest Articles
- Satellite Image Security Improvement by Combining DWT-DCT Watermarking and AES Encryption
- A Survey on Web Spam and Spam 2.0
- Development of an Attack-Resistant and Secure SCADA System using WSN, MANET, and Internet
- Model Driven Development: Research Issues and Opportunities
- Design and Modeling of a 3 DOF Machine
Last modified: 2014-12-18 14:49:10