Monday, 7 June 2010

Wseas Transactions

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Transactions: INTERNATIONAL JOURNAL of GEOLOGY
Transactions ID Number: 19-326
Full Name: Sanjay Kumar Singh
Position: Ph.D. Candidate
Age: ON
Sex: Male
Address: Department of Earthquake Engineering, Indian Institute of Technology, Roorkee
Country: INDIA
Tel: +91-9897888970
Tel prefix: +91
Fax: 01332276899
E-mail address: s2k.singh@gmail.com
Other E-mails: s2k_singh@yahoo.co.in
Title of the Paper: A Novel Maximum Fuzzy Entropy Thresholding of Seismic Images
Authors as they appear in the Paper: Sanjay Kumar Singh
Email addresses of all the authors: s2k.singh@gmail.com
Number of paper pages: 8
Abstract: Image thresholding is very useful for keeping the significant part of an image and getting rid of the unimportant part or noise. This holds true under the assumption that a reasonable threshold value is chosen. The study of image thresholding techniques in earthquake engineering, remote sensing, geology and geophysics seems to be extremely important for recognition of certain patterns such as faults, folding, fracturing, thrusting, closure, salt domes, strong reflectors, seismic facies, channels, bright spots etc, and the identification of large zones of common signal texture which are not detectable so minutely by other techniques. This paper presents a novel maximum fuzzy entropy thresholding of seismic images. The concept of fuzzy probability and fuzzy partition is introduced first. Then, based on the conditional probabilities and fuzzy partition, a 2-level optimal thresholding is searched adaptively through the maximum entropy principle of the seismic images.
Keywords: Digital Image Processing, Computer Vision, Image Thresholding, Image Segmentation, Fuzzy Probability, Fuzzy Partition, Fuzzy Entropy, Seismology, Seismic Image Processing
EXTENSION of the file: .pdf
Special (Invited) Session: A Novel Maximum Fuzzy Entropy Thresholding of Seismic Images
Organizer of the Session: 000
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