I-UNeXt:基于Inception和UNeXt的皮肤病变分割网络

Bin Luo, Yuanzhong Shu, Yunfeng Nie, Dongyue Chang, Yuhan Pan, Hui Shi
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引用次数: 0

摘要

从皮肤镜图像中分割皮肤病变对临床诊断和治疗计划非常重要。为了快速有效地分割皮肤损伤,本文提出了I-UNeXt分割网络。I-UNeXt是将Inception模块添加到UNeXt中。与UNeXt原有的普通卷积模块相比,加入的Inception模块通过使用不同的卷积核提取不同尺度的信息,增强了UNeXt的特征提取能力。同时,在原来的Inception模块中引入了展开卷积,在保持卷积的原始接受野的同时减少了模块的计算量。我们使用ISIC2017数据集来训练和测试I-UNeXt的分割性能。实验结果表明,F1-score、IOU和DICE分别为81.95%、71.10%和82.46%。该网络的整体性能优于其他最先进的网络。实验表明,本文提出的I-UNeXt网络可以有效分割皮肤病变,为现代皮肤病的诊断提供帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
I-UNeXt: A Skin Lesion Segmentation Network Based on Inception and UNeXt
Segmentation of skin lesions from dermoscopic images is very important for clinical diagnosis and treatment planning. In order to segment skin lesions quickly and effectively, the segmentation network I-UNeXt was proposed in this paper. I-UNeXt is to add the Inception module to UNeXt. Compared with UNeXt's original ordinary convolution module, the Inception module added enhances the feature extraction capability of UNeXt by using different convolution kernels to extract information of different scales. At the same time, dilated convolution is introduced into the original Inception module, which reduces the amount of computation in the module while maintaining the original receptive field of convolution. We used the ISIC2017 dataset to train and test the segmentation performance of I-UNeXt. The experimental results show that F1-score, IOU and DICE are 81.95%, 71.10% and 82.46%, respectively. The overall performance of the network is better than that of other most advanced networks. Experiments show that the I-UNeXt network proposed in this paper can effectively segment the skin lesions and provide help for the diagnosis of modern skin diseases.
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