Title :
Automatic object segmentation using mean shift and growcut
Author :
Elyor, K. ; GueeSang Lee
Author_Institution :
Dept. of Electron. & Comput. Eng., CNU, Kwangju, South Korea
Abstract :
In this paper, we propose an efficient unsupervised object segmentation algorithm that provides effective and robust segmentation of color images by incorporating the advantages of Mean Shift (MS) and GrowCut (GC) methods. In the first stage, the image is divided into different segments using MS algorithm and the generated segments are labeled using Mahalanobis distance. Then, the labeled segments are given to the GC method for grouping the clustered segments. The proposed method requires low computation complexity and is therefore very feasible for real time image segmentation processing. The superiority of the proposed method is examined and demonstrated through a number of experiments using color natural scene images. Experimental result shows that the proposed method gives better performance than other methods.
Keywords :
computational complexity; image colour analysis; image segmentation; natural scenes; pattern clustering; GC method; GrowCut method; MS method; Mahalanobis distance; clustered segment grouping; color images segmentation; color natural scene images; computation complexity; generated image segment labeling; mean-shift method; real-time image segmentation processing; unsupervised automatic object segmentation algorithm; Algorithm design and analysis; Automata; Image color analysis; Image segmentation; Kernel; Neural networks; Object segmentation; GrowCut; Mean shift; cellular automata; color; image segmentation; scene;
Conference_Titel :
Frontiers of Computer Vision, (FCV), 2013 19th Korea-Japan Joint Workshop on
Conference_Location :
Incheon
Print_ISBN :
978-1-4673-5620-6
DOI :
10.1109/FCV.2013.6485485