A Review on Edge Detection Algorithms in Digital Image Processing Applications

Main Article Content

R V Ramana, T V Rathnam, A Sankar Reddy

Abstract

Edge detection is one of the major step in Image segmentation, image enhancement, image detection and recognition applications. The main goal of edge detection is that to localize the variation in the intensity of an image to identify the phenomena of physical properties which produced by the capturing device. An edge might be characterized as a set of neighborhood pixels that forms a boundary between two different regions. Detecting the edges is an essential technique for segmenting the image in to various regions based on their discontinuity in the pixels. Edge detection has very important applications in image processing and computer vison. It is broadly used technique and quick feature extraction technique hence used in various feature extraction and feature detection techniques. There exists several methods in the literature for edge detection such as Canny, Prewitt, Sobel, Maar Hildrith, Robert etc. In this paper we have studied and compared Prewitt, Sobel, and Canny detection operators. Our experimental study shows that the canny operator is giving better results for different kinds of images and has numerous advantages than the other operators such as the nature of adaptive, works better for noisy images and providing the sharp edges with low probability of false detection edges.

Article Details

How to Cite
, R. V. R. T. V. R. A. S. R. (2017). A Review on Edge Detection Algorithms in Digital Image Processing Applications. International Journal on Recent and Innovation Trends in Computing and Communication, 5(10), 69 –. https://doi.org/10.17762/ijritcc.v5i10.1244
Section
Articles