Literature DB >> 21868894

A theoretical comparison of texture algorithms.

R W Conners1, C A Harlow.   

Abstract

An evaluation of the ability of four texture analysis algorithms to perform automatic texture discrimination will be described. The algorithms which will be examined are the spatial gray level dependence method (SGLDM), the gray level run length method (GLRLM), the gray level difference method (GLDM), and the power spectral method (PSM). The evaluation procedure employed does not depend on the set of features used with each algorithm or the pattern recognition scheme. Rather, what is examined is the amount of texturecontext information contained in the spatial gray level dependence matrices, the gray level run length matrices, the gray level difference density functions, and the power spectrum. The comparison will be performed in two steps. First, only Markov generated textures will be considered. The Markov textures employed are similar to the ones used by perceptual psychologist B. Julesz in his investigations of human texture perception. These Markov textures provide a convenient mechanism for generating certain example texture pairs which are important in the analysis process. In the second part of the analysis the results obtained by considering only Markov textures will be extended to all textures which can be represented by translation stationary random fields of order two. This generalization clearly includes a much broader class of textures than Markovian ones. The results obtained indicate that the SGLDM is the most powerful algorithm of the four considered, and that the GLDM is more powerful than the PSM.

Entities:  

Year:  1980        PMID: 21868894     DOI: 10.1109/tpami.1980.4767008

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   6.226


  30 in total

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2.  Imaging texture analysis for automated prediction of lung cancer recurrence after stereotactic radiotherapy.

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3.  A new method based for diagnosis of breast cancer cells from microscopic images: DWEE--JHT.

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4.  In vivo placental MRI shape and textural features predict fetal growth restriction and postnatal outcome.

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5.  Differentiation of arterioles from venules in mouse histology images using machine learning.

Authors:  J Sachi Elkerton; Yiwen Xu; J Geoffrey Pickering; Aaron D Ward
Journal:  J Med Imaging (Bellingham)       Date:  2017-02-28

6.  Lung scintigraphy clustering by texture analysis.

Authors:  L Cinotti; S Edery; E Kahn; H Susskind; A B Brill; R di Paola
Journal:  Eur J Nucl Med       Date:  1990

7.  A new method based on Adaptive Discrete Wavelet Entropy Energy and Neural Network Classifier (ADWEENN) for recognition of urine cells from microscopic images independent of rotation and scaling.

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Journal:  J Med Syst       Date:  2014-02-04       Impact factor: 4.460

8.  Studies on tissue characterization by texture analysis with co-occurrence matrix method using ultrasonography and CT imaging.

Authors:  Yi Wang; Kouichi Itoh; Nobuyuki Taniguchi; Hisao Toei; Fukiko Kawai; Michiru Nakamura; Kiyoka Omoto; Kyoko Yokota; Tomoko Ono
Journal:  J Med Ultrason (2001)       Date:  2002-12       Impact factor: 1.314

9.  A computer-aided diagnosis (CAD) scheme for pretreatment prediction of pathological response to neoadjuvant therapy using dynamic contrast-enhanced MRI texture features.

Authors:  Valentina Giannini; Simone Mazzetti; Agnese Marmo; Filippo Montemurro; Daniele Regge; Laura Martincich
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10.  Segmentation and classification of medical images using texture-primitive features: Application of BAM-type artificial neural network.

Authors:  Neeraj Sharma; Amit K Ray; Shiru Sharma; K K Shukla; Satyajit Pradhan; Lalit M Aggarwal
Journal:  J Med Phys       Date:  2008-07
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