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Adaptive Texture Energy Measure Method

Received: 26 May 2014    Accepted: 13 June 2014    Published: 30 June 2014
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Abstract

Recent developments in image quality, data storage, and computational capacity have heightened the need for texture analysis in image process. To date various methods have been developed and introduced for assessing textures in images. One of the most popular texture analysis methods is the Texture Energy Measure (TEM) and it has been used for detecting edges, levels, waves, spots and ripples by employing predefined TEM masks to images. Despite several successful studies, TEM has a number of serious weaknesses in use. The major drawback is; the masks are predefined therefore they cannot be adapted to image. A new method, Adaptive Texture Energy Measure Method (aTEM), was offered to overcome this disadvantage of TEM by using adaptive masks by adjusting the contrast, sharpening and orientation angle of the mask. To assess the applicability of aTEM, it is compared with TEM. The accuracy of the classification of butterfly, flower seed and Brodatz datasets are 0.08, 0.3292 and 0.3343, respectively by TEM and 0.0053, 0.2417 and 0.3153, respectively by aTEM. The results of this study indicate that aTEM is a successful method for texture analysis.

Published in International Journal of Intelligent Information Systems (Volume 3, Issue 2)
DOI 10.11648/j.ijiis.20140302.11
Page(s) 13-18
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Texture Energy Measure, Adaptive Image Process, Machine Vision, Feature Extraction

References
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Cite This Article
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    Ömer Faruk Ertuğrul. (2014). Adaptive Texture Energy Measure Method. International Journal of Intelligent Information Systems, 3(2), 13-18. https://doi.org/10.11648/j.ijiis.20140302.11

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    ACS Style

    Ömer Faruk Ertuğrul. Adaptive Texture Energy Measure Method. Int. J. Intell. Inf. Syst. 2014, 3(2), 13-18. doi: 10.11648/j.ijiis.20140302.11

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    AMA Style

    Ömer Faruk Ertuğrul. Adaptive Texture Energy Measure Method. Int J Intell Inf Syst. 2014;3(2):13-18. doi: 10.11648/j.ijiis.20140302.11

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  • @article{10.11648/j.ijiis.20140302.11,
      author = {Ömer Faruk Ertuğrul},
      title = {Adaptive Texture Energy Measure Method},
      journal = {International Journal of Intelligent Information Systems},
      volume = {3},
      number = {2},
      pages = {13-18},
      doi = {10.11648/j.ijiis.20140302.11},
      url = {https://doi.org/10.11648/j.ijiis.20140302.11},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijiis.20140302.11},
      abstract = {Recent developments in image quality, data storage, and computational capacity have heightened the need for texture analysis in image process. To date various methods have been developed and introduced for assessing textures in images. One of the most popular texture analysis methods is the Texture Energy Measure (TEM) and it has been used for detecting edges, levels, waves, spots and ripples by employing predefined TEM masks to images. Despite several successful studies, TEM has a number of serious weaknesses in use. The major drawback is; the masks are predefined therefore they cannot be adapted to image. A new method, Adaptive Texture Energy Measure Method (aTEM), was offered to overcome this disadvantage of TEM by using adaptive masks by adjusting the contrast, sharpening and orientation angle of the mask. To assess the applicability of aTEM, it is compared with TEM. The accuracy of the classification of butterfly, flower seed and Brodatz datasets are 0.08, 0.3292 and 0.3343, respectively by TEM and 0.0053, 0.2417 and 0.3153, respectively by aTEM. The results of this study indicate that aTEM is a successful method for texture analysis.},
     year = {2014}
    }
    

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  • TY  - JOUR
    T1  - Adaptive Texture Energy Measure Method
    AU  - Ömer Faruk Ertuğrul
    Y1  - 2014/06/30
    PY  - 2014
    N1  - https://doi.org/10.11648/j.ijiis.20140302.11
    DO  - 10.11648/j.ijiis.20140302.11
    T2  - International Journal of Intelligent Information Systems
    JF  - International Journal of Intelligent Information Systems
    JO  - International Journal of Intelligent Information Systems
    SP  - 13
    EP  - 18
    PB  - Science Publishing Group
    SN  - 2328-7683
    UR  - https://doi.org/10.11648/j.ijiis.20140302.11
    AB  - Recent developments in image quality, data storage, and computational capacity have heightened the need for texture analysis in image process. To date various methods have been developed and introduced for assessing textures in images. One of the most popular texture analysis methods is the Texture Energy Measure (TEM) and it has been used for detecting edges, levels, waves, spots and ripples by employing predefined TEM masks to images. Despite several successful studies, TEM has a number of serious weaknesses in use. The major drawback is; the masks are predefined therefore they cannot be adapted to image. A new method, Adaptive Texture Energy Measure Method (aTEM), was offered to overcome this disadvantage of TEM by using adaptive masks by adjusting the contrast, sharpening and orientation angle of the mask. To assess the applicability of aTEM, it is compared with TEM. The accuracy of the classification of butterfly, flower seed and Brodatz datasets are 0.08, 0.3292 and 0.3343, respectively by TEM and 0.0053, 0.2417 and 0.3153, respectively by aTEM. The results of this study indicate that aTEM is a successful method for texture analysis.
    VL  - 3
    IS  - 2
    ER  - 

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