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IMAGE PROCESSING, PATTERN RECOGNITION
Automatic segmentation of intracytoplasmic sperm injection images
V. Yu. Kovalev, A. G. Shishkin Lomonosov Moscow State University
Abstract:
In this paper, a multiclass image semantic segmentation problem was solved. For analysis, images of the intracytoplasmic sperm injection process were used. For training the neural network, 656 frames were manually labelled. As a result, each pixel of the images was assigned to one of four classes: microinjector, suction micropipette, oolemma, background. An analysis of modern approaches was carried out and the best architecture, encoders, and hyperparameters of the neural network were selected experimentally: the convolutional neural network FPN (feature pyramid network) with the resnext101 encoder having a depth of 101 layers with 32 parallel separable convolutions. The developed neural network model has allowed obtaining the segmentation efficiency of $IOU=0.96$ at the algorithm speed of 15 frames per second.
Keywords:
intracytoplasmic sperm injection, semantic segmentation, convolutional neural networks.
Received: 14.10.2021 Accepted: 25.11.2021
Citation:
V. Yu. Kovalev, A. G. Shishkin, “Automatic segmentation of intracytoplasmic sperm injection images”, Computer Optics, 46:4 (2022), 628–633
Linking options:
https://www.mathnet.ru/eng/co1054 https://www.mathnet.ru/eng/co/v46/i4/p628
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Abstract page: | 15 | Full-text PDF : | 5 |
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