An Overview of Image Processing System

Vineet Raj Singh Kushwah

Abstract


This paper deals with the “Hausdorff Distance”. This distance is used to determine the amount of resemblance between two objects. In this paper, I have provided an efficient algorithm to compute the Hausdorff Distance among all possible positions of binary image. We can compare two images using this algorithm nicely. It works with the different size of images even with black and white and colored images too.


Keywords


Model based recognition, Image Compression

Full Text:

PDF

References


Venkata RCR, Sunitha KVN, Lakshmi RD. Similar Image Searching From Image Database Using Cluster Mean Sorting and Performance Estimation. IEEE, 2012: 9-12.

Deshpande P, Kanikar P. Pixel Based Digital Image Forgery Detection Techniques. International Journal of Engineering Research and Applications 2012; 2(3): 539-43.

Kwang-Fu L, Tung-Shou C, Kuei-Hao C. Fractal Image Process Based Image Comparison Search Engine, NationalTaichung Institute of Technology Taichung, 404 Taiwan, 2003.

Hutttenlocher DP, Klanderman GA, Rucklidge WJ. Comparing images using the Hausdorff Distance. IEEE Transactions on Pattern Analysis and Machine Intelligence 1993; 15(9).

Gonzalez RC, Woods RE. Digital Image Processing, second edition, Prentice Hall.

Yen EK, Johnston RG. The ineffectiveness of the correlation coefficient for image comparison, Los Alamos National Laboratory, MS J565, Los Alamos, New Mexico 87545.

Sreedevi S, Sebastian S. Content Based Image Retrieval Based on Database Revision, IEEE, 2012.

Haifa BA, Bacarea V, Iacob O et al. Comparison between Digital Image Processing and Spectrophotometric Measurement Methods. Application in Electrophoresis Interpretation. Applied Medical Informatics 2011; 28(1): 29-36


Refbacks

  • There are currently no refbacks.