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Citation Information : International Journal on Smart Sensing and Intelligent Systems. Volume 9, Issue 3, Pages 1,384-1,409, DOI: https://doi.org/10.21307/ijssis-2017-923
License : (CC BY-NC-ND 4.0)
Received Date : 31-March-2016 / Accepted: 21-July-2016 / Published Online: 01-September-2016
In Vitro Fertilization (IVF) is a method which is used to help couples who
have a fertility problem. One of the problems of IVF is the success rate, which is only
about 30%. One cause of the problem is the embryo morphology observation done by
embryologist manually. Morphologically normal embryo does not mean the embryos
are genetically normal. The aforementioned phenomena can be tested by using time
lapse recording in which unavailable in the manual observation. Therefore it is very
important to establish method for time lapsed recording of the embryos. This can be
done by automatic observation on the embryo image, where the first step is to create a
system that can automatically detect the embryo. This paper proposed Random Sample
Consensus (RANSAC) method based on Arc Segment to automatically detect embryo.
From the experiment that have been conducted, the proposed method can detect single and multiple ellipse on embryo with a better accuracy than the previous method,
EDCircles by 6% and 3% for single and double respectively.
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