[1]
|
Prolificacy Assessment of Spermatozoan via state-of-the-art Deep Learning Frameworks
|
|
IEEE …,
2022 |
|
|
[2]
|
An Improved U-Net for Human Sperm Head Segmentation
|
|
Neural Processing Letters,
2022 |
|
|
[3]
|
Robotic Manipulation of Sperm as a Deformable Linear Object
|
|
IEEE Transactions on …,
2022 |
|
|
[4]
|
Sperm morphology analysis by using the fusion of two-stage fine-tuned deep networks
|
|
Biomedical Signal Processing and Control,
2022 |
|
|
[5]
|
Automated rare sperm identification from low-magnification microscopy images of dissociated microsurgical testicular sperm extraction samples using deep learning
|
|
Fertility and …,
2022 |
|
|
[6]
|
Supervised Machine Learning Classification of Human Sperm Head Based on Morphological Features
|
|
… and Advancements of …,
2022 |
|
|
[7]
|
Automation for ICSI Techniques and Systems
|
|
Manual of Intracytoplasmic …,
2021 |
|
|
[8]
|
Deep Learning-based Automated Rare Sperm Identification from Testes Biopsies
|
|
bioRxiv,
2021 |
|
|
[9]
|
Multi-model CNN fusion for sperm morphology analysis
|
|
Computers in Biology and Medicine,
2021 |
|
|
[10]
|
Automatic identification from noisy microscopic images
|
|
2021 |
|
|
[11]
|
Automatic Assessment of Human Sperm Images with Capsule Networks
|
|
Natural and Applied Sciences Journal,
2021 |
|
|
[12]
|
Advances in sperm analysis: techniques, discoveries and applications
|
|
2021 |
|
|
[13]
|
Robotic Cell Manipulation for Intracytoplasmic Sperm Injection (ICSI)
|
|
2020 |
|
|
[14]
|
Повышение эффективности вспомогательных репродуктивных технологий с помощью искусственного интеллекта и машинного обучения на …
|
|
Акушерство и …,
2020 |
|
|
[15]
|
A fully automated hybrid human sperm detection and classification system based on mobile-net and the performance comparison with conventional methods
|
|
2020 |
|
|
[16]
|
Supervised learning for semantic segmentation of human spermatozoa
|
|
2020 |
|
|
[17]
|
Classification of Human Sperm Head in Microscopic Images Using Twin Support Vector Machine and Neural Network
|
|
2020 |
|
|
[18]
|
Computer-Assisted Analysis of Human Semen Concentration and Motility
|
|
2020 |
|
|
[19]
|
Automated sperm morphology analysis approach using a directional masking technique
|
|
2020 |
|
|
[20]
|
A novel deep learning method for automatic assessment of human sperm images
|
|
2019 |
|
|
[21]
|
Genetic Neural Architecture Search for automatic assessment of human sperm images
|
|
2019 |
|
|
[22]
|
Smartphone based sperm counting-an alternative way to the visual assessment technique in sperm concentration analysis
|
|
2019 |
|
|
[23]
|
Robotic Manipulation and Selection of Single Sperm for In Vitro Fertilization
|
|
2019 |
|
|
[24]
|
Automated Morphology Detection from Human Sperm Images
|
|
Intracytoplasmic Sperm Injection,
2018 |
|
|
[25]
|
Identification Male Fertility Through Abnormalities Sperm Based Morphology (Teratospermia) using Invariant Moment Method
|
|
Journal of Physics: Conference Series,
2018 |
|
|
[26]
|
Automated Non-Invasive Measurement of Single Sperm's Motility and Morphology
|
|
2018 |
|
|
[27]
|
A New Method for Detecting Sperms in Microscopy Images: Combination of Zernike Moments and Spatial Processing
|
|
2018 |
|
|
[28]
|
Use of classifiers and recursive feature elimination to assess boar sperm viability
|
|
Logic Journal of the IGPL,
2018 |
|
|
[29]
|
The Effects of the Modified Overlapping Group Shrinkage Technique on the Sperm Segmentation in the Stained Images
|
|
2018 |
|
|
[30]
|
An automatic system for spermiogram analysis based on image processing techniques and support vector machines
|
|
2018 |
|
|
[31]
|
Convolutional neural networks for segmentation and object detection of human semen
|
|
2017 |
|
|
[32]
|
A New Region-Based Adaptive Thresholding For Sperm Motility Segmentation
|
|
2017 |
|
|
[33]
|
Automatic detection and segmentation of sperm head, acrosome and nucleus in microscopic images of human semen smears
|
|
Computer Methods and Programs in Biomedicine,
2016 |
|
|
[34]
|
An automated system for investigating sperm orientation in fluid flow
|
|
2016 |
|
|
[35]
|
A NEW REGION-BASED ADAPTIVE THRESHOLDING FOR SPERM MOTILITY SEGMENTATION.
|
|
Malaysian Journal of Computer Science,
2016 |
|
|
[36]
|
Use of Support Vector Machines and Neural Networks to Assess Boar Sperm Viability
|
|
International Joint Conference SOCO’16-CISIS’16-ICEUTE’16,
2016 |
|
|
[37]
|
Automated Sperm Head Detection Using Intersecting Cortical Model Optimised by Particle Swarm Optimization
|
|
PLOS ONE,
2016 |
|
|
[38]
|
An efficient method for automatic morphological abnormality detection from human sperm images
|
|
Computer methods and programs in biomedicine,
2015 |
|
|
[39]
|
Sperm Cells Segmentation in Micrographic Images Through Lambertian Reflectance Model
|
|
Computer Analysis of Images and Patterns,
2015 |
|
|
[40]
|
Segmentation and classification of human sperm heads towards morphological sperm analysis
|
|
2015 |
|
|
[41]
|
Gold-standard and improved framework for sperm head segmentation
|
|
Computer methods and programs in biomedicine,
2014 |
|
|
[42]
|
Automatic sperms counting using adaptive local threshold and ellipse detection
|
|
Information Technology Systems and Innovation (ICITSI), 2014 International Conference on,
2014 |
|
|
[43]
|
Assessment of acrosome state in boar spermatozoa heads using n-contours descriptor and RLVQ
|
|
Computer methods and programs in biomedicine,
2013 |
|
|
[44]
|
Assessment of acrosome state in boar spermatozoa heads using< i> n-contours descriptor and RLVQ
|
|
Computer methods and programs in biomedicine,
2013 |
|
|
[45]
|
Automated evaluation of gamete and embryo quality for assisted reproduction
|
|
2013 |
|
|
[46]
|
Assessment of acrosome state in boar spermatozoa heads using n-contours descriptor and RLVQ
|
|
Computer Methods and Programs in Biomedicine,
2013 |
|
|
[47]
|
Automation Techniques and Systems for ICSI
|
|
C Dai, Z Zhang, G Shan
|
|
|
[48]
|
Automatic Identification of Human Sperms from Noisy Microscopic Images
|
|
kenawy, MM Eid
|
|
|