作者Patel, Mehul Bhupendra
The University of Arizona. Electrical & Computer Engineering
書名Image analysis algorithms for ovarian cancer detection using confocal microendoscopy [electronic resource]
說明140 p
附註Source: Masters Abstracts International, Volume: 46-04, page: 2238
Adviser: Jeffrey J. Rodriguez
Thesis (M.S.)--The University of Arizona, 2008
Confocal microendoscopy is a promising new diagnostic imaging technique that is minimally invasive and provides in-vivo cellular-level images of tissue. In this study, we developed various image analysis techniques for ovarian cancer detection using the confocal microendoscope system. Firstly, we developed a technique for automatic classification of images based on focus, to prune out the out-of-focus images from the ovarian dataset. Secondly, we modified the texture analysis technique developed earlier to improve the stability of the textural features. The modified technique gives stable features and more consistent performance for ovarian cancer detection. Although confocal microendoscopy provides cellular-level resolution, it is limited by a small field of view. We present a fast technique for stitching the individual frames of the tissue to form a large mosaic. Such a mosaic will aid the physician in diagnosis, and also makes quantitative and statistical analysis possible on a larger field of view
School code: 0009
主題Engineering, Electronics and Electrical
0544
ISBN/ISSN9780549423577
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