Motility Analysis with Morphology: Study Related to Human Sperm
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Citations
•Proceedings Article
Quantitative Analysis of Locomotive Behavior of Human Sperm Head and Tail.
Jun Liu,Zhe Lu,Clement H. C. Leung,Yu Sun +3 more
- 01 Jan 2012
TL;DR: In this article, a multisperm tracking algorithm that tracks both sperm heads and low-contrast sperm tails is presented. And the tracking results confirm a significant correlation between sperm head velocity and tail beating amplitude, demonstrate that sperms bound to HA generally have a higher velocity before binding, and quantitatively reveal that the tail beating amplitudes are different among HA-bound Sperms.
33
Mixture gaussian V2 based microscopic movement detection of human spermatozoa
TL;DR: The sperm analysis process can be done automatically and efficiently in terms of time and the MoG (Mixture of Gaussian) V2 (2 Dimension Variable) algorithm has succeeded in extracting sperm shape close to its original form and is superior compared to other methods.
8
Abnormality Determination of Spermatozoa Motility Using Gaussian Mixture Model and Matching-based Algorithm
I. Gede,Susrama Mas Diyasa,Wahyu Syaifullah,Jauharis Saputra,Anak Agung,Ngurah Gunawan,Dheasy Herawati,Sahrul Munir,Sayyidah Humairah +8 more
TL;DR: A novel method for determining sperm movement abnormalities using Gaussian Mixture Model and Matching-based Algorithm is presented. The method successfully distinguishes between normal and abnormal sperm movement, with high tracking and accuracy accuracy.
Differences of Spermatozoa Concentration Analysis Between Manual and Automatic Methods
Emma Ismawatie,Purwanto Adhipireno,Seso Sulijaya Suyono,Edy Purwanto,Budi Santoso,Edward Kurnia Setiawan Limijadi +5 more
- 30 Oct 2021
TL;DR: The results of statistical tests using the Mann Whitney methods show that the significance value (p) was 0.960, which means that there was no difference in the results of the sperm concentration examination between the manual method and the automatic method.
2
References
Modifications to the imagej computer assisted sperm analysis plugin greatly improve efficiency and fundamentally alter the scope of attainable data
Craig F. Purchase,P. T. Earle +1 more
TL;DR: In this paper, a modified imagej CASA_automated plugin was introduced to improve efficiency and allow higher quality research to be conducted with no extra post-microscope effort.
63
Quantitative Analysis of Locomotive Behavior of Human Sperm Head and Tail
TL;DR: A multisperm tracking algorithm that tracks both sperm heads and low-contrast sperm tails is presented, which confirms a significant correlation between sperm head velocity and tail beating amplitude and quantitatively reveals that HA-bound sperms' tail beating amplitudes are different among HA- bound sperm.
Computer-based tracking of single sperm
TL;DR: A robust single sperm tracking algorithm (SSTA) that can be used in laser optical trapping and sperm motility studies and is validated through examples and comparisons to commercially available computer-aided sperm tracking systems.
•Proceedings Article
Quantitative Analysis of Locomotive Behavior of Human Sperm Head and Tail.
Jun Liu,Zhe Lu,Clement H. C. Leung,Yu Sun +3 more
- 01 Jan 2012
TL;DR: In this article, a multisperm tracking algorithm that tracks both sperm heads and low-contrast sperm tails is presented. And the tracking results confirm a significant correlation between sperm head velocity and tail beating amplitude, demonstrate that sperms bound to HA generally have a higher velocity before binding, and quantitatively reveal that the tail beating amplitudes are different among HA-bound Sperms.
33
Multi-object tracking of human spermatozoa
Lauge Sørensen,Jakob Appel Østergaard,Peter Johansen,Marleen de Bruijne,Marleen de Bruijne +4 more
- 06 Mar 2008
TL;DR: A system for tracking of human spermatozoa in phase-contrast microscopy image sequences that combines a particle filter and Kalman filters for robust motion estimation of the spermarozoa tracks and is capable of handling missing or spurious observations.
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