Browse > Article
http://dx.doi.org/10.22156/CS4SMB.2021.11.02.041

Image Edge Detection Algorithm applied Directional Structure Element Weighted Entropy Based on Grayscale Morphology  

Chang, Yu (Dept. of Electrical Engineering, Wonkwang University)
Cho, JoonHo (Dept. of Electrical Convergence Engineering, Wonkwang University)
Moon, SungRyong (Dept. of Electrical Engineering, Wonkwang University)
Publication Information
Journal of Convergence for Information Technology / v.11, no.2, 2021 , pp. 41-46 More about this Journal
Abstract
The method of the edge detection algorithm based on grayscale mathematical morphology has the advantage that image noise can be removed and processed in parallel, and the operation speed is fast. However, the method of detecting the edge of an image using a single structural scale element may be affected by image information. The characteristics of grayscale morphology may be limited to the edge information result of the operation result by repeatedly performing expansion, erosion, opening, and containment operations by repeating structural elements. In this paper, we propose an edge detection algorithm that applies a structural element with strong directionality to noise and then applies weighted entropy to each pixel information in the element. The result of applying the multi-scale structural element applied to the image and the result of applying the directional weighted entropy were compared and analyzed, and the simulation result showed that the proposed algorithm is superior in edge detection.
Keywords
Morphology; Entropy; Image Denoising; Edge Extraction; Parameter Extraction;
Citations & Related Records
연도 인용수 순위
  • Reference
1 W. Zheng. (2012). An edge detection method based on mathematical morphology, [J]. Computer and digital engineering, 40(2), 102-104.   DOI
2 D. Xu. (2012). Edge detection algorithm based on mathematical morphology and wavelet transform. Journal of Computer Applications, 32(S2), 165-167.
3 N. Ma. (2012). Adaptive image denoising method based on directionlet transform. Computer Engineering, 38(14), 184-186.
4 J. Yang. (2011). Edge detection technique combined with mathematic morphology and LoG operator. Jisuanji Gongcheng yu Yingyong (Computer Engineering and Applications), 47(36), 177-179.
5 E. Rhee. (2017). Development of a Forest Fire Tracking and GIS Mapping Base on Live Streaming. Journal of Converence for Information Technology, 10(10), 123-127. DOI : 10.22156/CS4SMB.2020.10.10.123   DOI
6 I. J. Cho, G. B. Kim & B. Park. (2020). Security Algorithm for Vehicle Type Recognition. Journal of Converence for Information Technology, 7(2), 77-82. DOI : 10.22156/CS4SMB.2017.7.2.077   DOI
7 S. W. Ha, Q. Paul & Y.-H. Moon. (2018). Improvement of UAV Attitude Information Estimation Performance Using Image Processing and Kalman Filter. Journal of Converence for Information Technology, 8(9), 125-142. DOI : 10.22156/CS4SMB.2018.8.6.135   DOI
8 H. F. Wang. (2009). Research and application of edge detection operator based on mathematical morphology. Computer Engineering and Applications, 45(9), 223-226.   DOI
9 S. M. Lee, Y. H. Kim & J. K. Eem. (2020). A Method of Edge Line Detection for Noisy Panel Module Images. Journal of Korean institute of Information Technology, 18(7), 75-80. DOI : 10.14801/jkiit.2020.18.7.75   DOI
10 Y. Li. (2010). Comparison and implementation of image edge detection algorithm. Computer Engineering and Design, 31(9), 1971-1975.
11 R. M. Haralick. (1987). Image analysis using mathematical morphology. IEEE Trans.Pattern Anal.Mach.Intell., (4), 532-550.