Convolutional neural networks for segmentation and object detection of human semen
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Convolutional neural networks for segmentation and object detection of human semen. / Nissen, Malte Stær; Krause, Oswin; Almstrup, Kristian; Kjærulff, Søren; Nielsen, Torben T.; Nielsen, Mads.
Image Analysis: 20th Scandinavian Conference, SCIA 2017, Tromsø, Norway, June 12–14, 2017, Proceedings, Part I. red. / Puneet Sharma; Filippo Maria Bianchi. Bind Part 1 Springer, 2017. s. 397-406 (Lecture notes in computer science, Bind 10269).Publikation: Bidrag til bog/antologi/rapport › Konferencebidrag i proceedings › Forskning › fagfællebedømt
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TY - GEN
T1 - Convolutional neural networks for segmentation and object detection of human semen
AU - Nissen, Malte Stær
AU - Krause, Oswin
AU - Almstrup, Kristian
AU - Kjærulff, Søren
AU - Nielsen, Torben T.
AU - Nielsen, Mads
N1 - Conference code: 20
PY - 2017
Y1 - 2017
N2 - We compare a set of convolutional neural network (CNN) architectures for the task of segmenting and detecting human sperm cells in an image taken from a semen sample. In contrast to previous work, samples are not stained or washed to allow for full sperm quality analysis, making analysis harder due to clutter. Our results indicate that training on full images is superior to training on patches when class-skew is properly handled. Full image training including up-sampling during training proves to be beneficial in deep CNNs for pixel wise accuracy and detection performance. Predicted sperm cells are found by using connected components on the CNN predictions. We investigate optimization of a threshold parameter on the size of detected components. Our best network achieves 93.87% precision and 91.89% recall on our test dataset after thresholding outperforming a classical image analysis approach.
AB - We compare a set of convolutional neural network (CNN) architectures for the task of segmenting and detecting human sperm cells in an image taken from a semen sample. In contrast to previous work, samples are not stained or washed to allow for full sperm quality analysis, making analysis harder due to clutter. Our results indicate that training on full images is superior to training on patches when class-skew is properly handled. Full image training including up-sampling during training proves to be beneficial in deep CNNs for pixel wise accuracy and detection performance. Predicted sperm cells are found by using connected components on the CNN predictions. We investigate optimization of a threshold parameter on the size of detected components. Our best network achieves 93.87% precision and 91.89% recall on our test dataset after thresholding outperforming a classical image analysis approach.
KW - Convolutional neural networks
KW - Deep learning
KW - Fertility examination
KW - Human sperm
KW - Segmentation
U2 - 10.1007/978-3-319-59126-1_33
DO - 10.1007/978-3-319-59126-1_33
M3 - Article in proceedings
AN - SCOPUS:85020400552
SN - 978-3-319-59125-4
VL - Part 1
T3 - Lecture notes in computer science
SP - 397
EP - 406
BT - Image Analysis
A2 - Sharma, Puneet
A2 - Bianchi, Filippo Maria
PB - Springer
Y2 - 12 June 2017 through 14 June 2017
ER -
ID: 184142886