Nonlinear Activation-Free Contextual Attention Network for Polyp Segmentation

Inf. Comput. Pub Date : 2023-06-26 DOI:10.3390/info14070362
Weidong Wu, Hongbo Fan, Yu Fan, Jian Wen
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Abstract

The accurate segmentation of colorectal polyps is of great significance for the diagnosis and treatment of colorectal cancer. However, the segmentation of colorectal polyps faces complex problems such as low contrast in the peripheral region of salient images, blurred borders, and diverse shapes. In addition, the number of traditional UNet network parameters is large and the segmentation effect is average. To overcome these problems, an innovative nonlinear activation-free uncertainty contextual attention network is proposed in this paper. Based on the UNet network, an encoder and a decoder are added to predict the saliency map of each module in the bottom-up flow and pass it to the next module. We use Res2Net as the backbone network to extract image features, enhance image features through simple parallel axial channel attention, and obtain high-level features with global semantics and low-level features with edge details. At the same time, a nonlinear n on-activation network is introduced, which can reduce the complexity between blocks, thereby further enhancing image feature extraction. This work conducted experiments on five commonly used polyp segmentation datasets, and the experimental evaluation metrics from the mean intersection over union, mean Dice coefficient, and mean absolute error were all improved, which can show that our method has certain advantages over existing methods in terms of segmentation performance and generalization performance.
多边形分割的非线性无激活上下文注意网络
结直肠息肉的准确分割对结直肠癌的诊断和治疗具有重要意义。然而,结肠直肠息肉的分割面临着突出图像周边对比度低、边界模糊、形状多样等复杂问题。此外,传统UNet网络参数数量较多,分割效果一般。为了克服这些问题,本文提出了一种新颖的非线性无激活不确定性上下文注意网络。在UNet网络的基础上,增加一个编码器和一个解码器,预测自底向上流程中每个模块的显著性映射并传递给下一个模块。我们以Res2Net为骨干网络提取图像特征,通过简单的平行轴向通道关注增强图像特征,获得具有全局语义的高级特征和具有边缘细节的低级特征。同时,引入非线性非激活网络,降低了块之间的复杂度,从而进一步增强了图像特征提取。本工作在5个常用的息肉分割数据集上进行了实验,从平均交集/并、平均Dice系数、平均绝对误差等实验评价指标都得到了改进,可以看出我们的方法在分割性能和泛化性能上都比现有的方法有一定的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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