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Please use this identifier to cite or link to this item: https://oldena.lpnu.ua/handle/ntb/39493
Title: Blood cells classification by image color and intensity features clustering
Authors: Melnyk, R. A.
Dubytskyi, A. O.
Affiliation: Lviv Polytechnic National University
Bibliographic description (Ukraine): Melnyk R. A. Blood cells classification by image color and intensity features clustering / R. A. Melnyk, A. O. Dubytskyi // Litteris et Artibus : proceedings of the 5th International youth science forum, November 26–28, 2015, Lviv, Ukraine / Lviv Polytechnic National University. – Lviv : Lviv Polytechnic Publishing House, 2015. – P. 46–49. – Bibliography: 7 titles.
Conference/Event: Litteris et Artibus
Issue Date: 2015
Publisher: Lviv Polytechnic Publishing House
Country (code): UA
Place of the edition/event: Lviv
Keywords: computer vision
visual object detection
visual object classification
binarization
connected component labeling
intensity feature
color feature
cluster analysis
Number of pages: 46-49
Abstract: A new approach for cells detection and classification on blood smear images is considered. Benefit of 4-connected over 8-connected component labeling for cell detection is shown. Color and intensity histogram clustering are proposed to extract common features for cells classification. A new approach for k-means initial centroids detection proposed. The algorithms effectiveness was tested and estimated for some blood smear images. The algorithm examples, figures and result table to illustrate the approach are presented.
URI: https://ena.lpnu.ua/handle/ntb/39493
References (International): [1] C. Hc sliding windows: Object localization by efficient subwindow search”, CVPR, 2008. [2] Pham, Dzung L.; Xu, Chenyang; Prince, Jerry L., "Current Methods in Medical Image Segmentation". Annual Review of Biomedical Engineering 2: 315– 337, 2000. [3] Luigi Di Stefano, Andrea Bulgarelli, “A Simple and Efficient Connected Components Labeling Algorithm,” ICIAP, 10th International Conference on Image Analysis and Processing, pp.322, 1999. [4] N. Otsu, ‘‘A threshold selection method from gray level histograms,’’ IEEE Trans. Syst. Man Cybern. SMC-9, 62–66, 1979. [5] MacKay, David, "Chapter 20. An Example Inference Task: Clustering". Information Theory, Inference and Learning Algorithms. Cambridge University Press. pp. 284–292. ISBN 0-521-64298-1. MR 2012999, 2003 [6] Orchard M, Bouman C, “Color quantization of images”. IEEE Trans Signal Process 39(12):2677- 2690, 1991. [7] P. Maslak, “Normal peripheral blood smear - 1.” http://imagebank.hematology.org/AssetDetail.aspx?A ssetID=3666&AssetType=Asset, September 2008.
Content type: Conference Abstract
Appears in Collections:Litteris et Artibus. – 2015 р.

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