基于改进SwinUNet的黑色素瘤图像分割方法研究

Zhenyue Zhu, Yingshu Lu
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引用次数: 0

摘要

针对SwinUNet在黑色素瘤图像分割中存在的边界模糊、分割效果差的问题,提出了一种改进的SwinUNet网络分割方法。首先,利用骰子损失函数缓解背景和区域不平衡;其次,使每一解码器层融合来自编码器的小尺度特征图、来自解码器的同尺度特征图和大尺度特征图,从而捕获全尺度的细粒度语义和粗粒度语义;最后,增大滑动窗口的大小,扩大模型的接受域,并利用Dice系数对分割结果进行评价。原始SwinUNet和三种改进模型的平均Dice值分别为0.8311、0.8689、0.8719和0.8661。实验结果表明,本文提出的改进模型能够有效提高原模型的准确率,这对于黑色素瘤的早期诊断和治疗具有极其重要的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on melanoma image segmentation method based on improved SwinUNet
Aiming at the problems of fuzzy boundary and poor segmentation effect of SwinUNet in melanoma image segmentation, an improved SwinUNet network segmentation method was proposed. Firstly, Dice loss function is used to alleviate the background and regional imbalance. Secondly, each decoder layer is made to fuse the smaller scale from the encoder, the same scale feature map and the larger scale feature map from the decoder, so that the fine-grained semantics and coarse-grained semantics at the full scale can be captured . Finally, the size of the sliding window is increased, the receptive field of the model is enlarged, and the Dice coefficient is used to evaluate the segmentation results. The average Dice values of the original SwinUNet and the three improved models were 0.8311, 0.8689, 0.8719 and 0.8661, respectively. The experimental results show that the improved model proposed in this paper can effectively improve the accuracy of the original model, which is extremely important for the early diagnosis and treatment of melanoma.
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