Abstract:Polycystic ovary syndrome (PCOS) is a disease that seriously endangers women′s health. Aiming to solve the problem of low contrast in the targeted area and high background noise in PCOS ultrasound images, a segmentation method of polycystic ovary images based on improved U-Net network was proposed in this paper. Firstly, the PCOS images were preprocessed to reduce the influence of speckle noise and shadows; then, redundant low-frequency feature maps were reduced by octave convolution module and feature fusion is performed; then, the hierarchical residual skip connection module was used to compensate for U-Net semantic gap between encoder and decoder; secondly, experiments were performed using PCOS ultrasound image dataset; finally, validation experiments were performed using ISIC2018, a public dataset containing 2 594 skin lesion images. The proposed method achieved a segmentation accuracy of 88.42% on the PCOS ultrasound image dataset, which was 4.24% higher than that of U-Net; and achieved a segmentation accuracy of 97.5% on the ISIC2018 dataset. The experimental results showed that the proposed method not only improved the segmentation of polycystic ovarian vesicles, but also had better performance in terms of robustness, which could also be referred to other medical image segmentation fields.
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