scholarly journals Computer analysis of cervical cells. Automatic feature extraction and classification.

1978 ◽  
Vol 26 (11) ◽  
pp. 1000-1017 ◽  
Author(s):  
J Holmquist ◽  
E Bengtsson ◽  
O Eriksson ◽  
B Nordin ◽  
B Stenkvist

A prescreening instrument for cervical smears using computerized image processing and pattern recognition techniques requires that single cells in the specimen can be automatically isolated and analyzed. This paper describes a dual wavelength method for automatic isolation of the cytoplasm and nuclei of cells. Density-oriented, shape-oriented and texture-oriented parameters were calculated and evaluated for more than 600 cells. It is shown that the computer can be taught to distinguish between normal and atypical cells with an accuracy of ca. 97%, while human classification reproducibility is ca. 95%. In addition, an attempt to assign a measure of atypia to individual cells is described.

2015 ◽  
Vol 9 (7) ◽  
pp. 783-789 ◽  
Author(s):  
Yang Woo Yong ◽  
Park Ji Hoon ◽  
Bae Jun Woo ◽  
Kang Sung Cheol ◽  
Myung Noh Hoon

1976 ◽  
Vol 24 (12) ◽  
pp. 1218-1224 ◽  
Author(s):  
J Holmquist ◽  
Y Imasoto ◽  
E Bengtsson ◽  
B Olsen ◽  
B Stenkvist

As part of a study of cytologic automation, microspectrophotometric investigation of Papanicolaou-stained cervical cells was performed, using a Leitz MPV-II scanning photometer connected to a PDP 8/F minicomputer. It was shown that the selection of one single wavelength may result in difficulties in detecting boundries between background and cytoplasm and/or between cytoplasm nucleus. A set of two wavelengths, 530 nm and 570 nm, were found to be optimal for the image processing of these cells.


Author(s):  
Anindita Das Bhattacharjee

Accessibility problem is relevant for audiovisual information, where enormous data has to be explored and processed. Most of the solutions for this specific type of problems point towards a regular need of extracting applicable information features for a given content domain. And feature extraction process deals with two complicated tasks first deciding and then extracting. There are certain properties expected from good features-Repeatability, Distinctiveness, Locality, Quantity, Accuracy, Efficiency, and Invariance. Different feature extraction techniques are described. The chapter concentrates of taking a survey on the topic of Feature extraction and Image formation. Here both image and video are considered to have their feature extracted. In machine learning, pattern recognition and in image processing has significant contribution. The feature extraction is one of the common mechanisms involved in these two techniques. Extracting feature initiates from an initial data set of measured data and constructs derived informative values which are non redundant in nature.


1993 ◽  
Author(s):  
Penny Chen ◽  
Gary D. Shubinsky ◽  
Kwan-Hwa Jan ◽  
Chien-An Chen ◽  
Oliver Sidla ◽  
...  

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