RETRACTED ARTICLE: An improved convolutional neural network for abnormality detection and segmentation from human sperm images

被引:0
作者
L. Prabaharan
A. Raghunathan
机构
[1] SASTRA Deemed to be University,School of Computing
[2] Bharath Heavy Electricals Ltd.,undefined
来源
Journal of Ambient Intelligence and Humanized Computing | 2021年 / 12卷
关键词
Sperm images; Deep Convolutional Neural Network; Enhanced Otsu’s threshold method; Median filtering; Segmentation; Abnormality detection;
D O I
暂无
中图分类号
学科分类号
摘要
Recent days, the infertility is affecting one of every ten couples. This makes the negative effect on the quality of a couple’s life, social causes, and psychological problems. Here the sperm morphology analysis helps to diagnose this problem. Here the machine learning approach is used for classification, detection and segmentation process. This also utilizes morphology approach for image representation. In this proposed method, the deep convolutional neural network is used for detecting the abnormality of human male infertility. Here the image morphological process is employed with the enhanced Otsu’s threshold method for segmenting the sperm image, which helps to detect the abnormal region using convolution layer. Here the database is collected from the human sperm image analysis dataset. Initially, the morphological process is applied to reduce the noise from the given set of input image then the segmentation process is performed by using E-Otsu’s threshold method. Two-dimensional Otsu’s thresholding technique reduces the computation complexity and it uses the median filter and for edge reduction approach sobel operator is used, which improves the performance of segmentation. Overall, the proposed research work optimizes three sections that are image representation by morphology approach, image segmentation by Enhanced-Otsu’s thresholding approach, and abnormality detection by Convolutional Neural Network. This method obtains the result of accuracy, detection rate, and computation time. By comparing with the existing method, the proposed method achieves the 98.99% of accuracy result and detects the abnormality effectively with the reduced computation time of 4 min and 15 s. This proposed work is done by using MATLAB with the adaptation of 2018a.
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页码:3341 / 3352
页数:11
相关论文
共 76 条
[1]  
Chaudhari NM(2016)New human semen analysis system (CASA) using Microscopic image processing techniques ICTACT J Image Video Process 7 1381-1391
[2]  
Pawar BV(2016)Automatic detection and segmentation of sperm head, acrosome and nucleus in microscopic images of human semen smears Comput Methods Progr Biomed 132 11-20
[3]  
Fariba Shaker S(2019)Efficient and robust segmentation and tracking of sperm cells in microscopic image sequence IET Comput Vis 13 489-499
[4]  
Monadjemi A(2015)An efficient method for automatic morphological abnormality detection for human sperm image Comput Methods Progr Biomed 122 409-420
[5]  
Naghsh-Nilchi AR(2001)Objectively measured sperm motility and sperm head morphometry in boars ( J Androl 22 104-110
[6]  
Fateme MK(2019)): relation to fertility and seminal plasma growth factors Electron Lett 55 256-258
[7]  
Hamid Reza SM(2020)Automatic directional masking technique for better sperm morphology segmentation and classification analysis Med Biol Eng Comput 58 1047-1068
[8]  
Abdolhossein S(2018)A Fully automated hybrid human sperm detection and classification system based on mobile-net and the performance comparison with conventional methods Magmetochemistry 4 1-17
[9]  
Ghasemian F(2019)Supervised learning to predict sperm sorting by magnetophoresis Commun Biol 9257 664-674
[10]  
Mirroshandel SA(2015)Deep learning based selection of human Sperm with high DNA integrity Proc Int Conf Comput Anal Images Patterns 109 242-253