Y-Net:多域图像分割的卷积网络

Fenyong Li, Yizheng Lin, Xiangmin Li, Yuping Yang, Lihua Huang
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引用次数: 0

摘要

为了解决现有SOD网络不能很好地提取局部细节和全局对比度信息,且边缘细节不足的缺点,我们设计了一种精确、紧凑的显著性多域图像分割算法,简称Y-Net。该网络结合了深度学习领域的新型u型网络U2NetP和RAS网分割网络,并通过自制模块和残差机制很好地结合了两种分割网络各自的特点。它在不同类型图像的分割方面表现突出。Y-Net已经过测试,在五个主要公共数据集中表现出比最初的两个基本网络更强的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Y-Net: Convolutional Networks for Multi-Domain Image Segmentation
In order to solve the drawback that most existing SOD networks cannot extract local details and global contrast information well, and often have insufficient detail on the edges, we design an accurate and compact saliency multi-domain image segmentation algorithm, Y-Net for short. This network combines the new U-shaped network U2NetP and RAS Net segmentation network in the field of deep learning, and well combines the characteristics of each of the two segmentation networks through the self-made module and residual mechanism. It is outstanding in segmentation of different types of images. Y-Net has been tested to show stronger performance than the original two base networks in five major public datasets.
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