IMAGE ENHANCEMENT USING DWT?
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.3, No. 12)Publication Date: 2014-12-30
Authors : Neeraj Varma; Shital Gupta; Anshuman Sharma;
Page : 514-520
Keywords : 3-Level DWT; Clustering; Fuzzy C-Means; Image Enhancement; Image Segmentation; MSE; PSNR; Wavelet Transform;
Abstract
The aim of image enhancement is to improve the interpretability or perception of information in images for human viewers, or to provide `better' input for other automated image processing techniques. Image Enhancement process is use to enhances the original image into the good image according to quality. The aim is to enhance the features of original image for the better output. In this paper, we propose image enhancement technique such as DWT (Discrete Wavelet Transform) and image segmentation is a popular approach and has been widely used in many display related fields, such as consumer electronics, medical analysis, and so on. we use 3- Level of DWT to filter the original image with low pass and high pass filters to remove the unwanted information and fuzzy c-mean clustering segmentation technique partitioning a digital image into multiple segments i.e. set of pixels, pixels in a region locate n are similar according to some homogeneity criteria such as color, texture, or intensity to identify and locate boundaries and an object in an image. The quality of segmentation results of different images are evaluated using PSNR and MSE values.
Other Latest Articles
- On Aesthetic Conception of the Ontological Foundation of Classical Chinese Literature
- Socio-Economic Condition and Health Status of Urban Slums: A Case Study of Jogo Chak, Sialkot
- The Impact of Beliefs in Witchcraft and Magic on Attitudes towards Sustainable Agricultural Productivity in Gucha District, Kenya
- Mental Health Problems of Freshman College Binge Drinkers and Cigarette Smokers
- Teleholographic Reality Performance: Staging and Its Relevance in the Cyberspace Era
Last modified: 2014-12-30 17:44:34