EAAC-Net: An Efficient Adaptive Attention and Convolution Fusion Network for Skin Lesion Segmentation.

Chao Fan, Zhentong Zhu, Bincheng Peng, Zhihui Xuan, Xinru Zhu
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Abstract

Accurate segmentation of skin lesions in dermoscopic images is of key importance for quantitative analysis of melanoma. Although existing medical image segmentation methods significantly improve skin lesion segmentation, they still have limitations in extracting local features with global information, do not handle challenging lesions well, and usually have a large number of parameters and high computational complexity. To address these issues, this paper proposes an efficient adaptive attention and convolutional fusion network for skin lesion segmentation (EAAC-Net). We designed two parallel encoders, where the efficient adaptive attention feature extraction module (EAAM) adaptively establishes global spatial dependence and global channel dependence by constructing the adjacency matrix of the directed graph and can adaptively filter out the least relevant tokens at the coarse-grained region level, thus reducing the computational complexity of the self-attention mechanism. The efficient multiscale attention-based convolution module (EMA⋅C) utilizes multiscale attention for cross-space learning of local features extracted from the convolutional layer to enhance the representation of richly detailed local features. In addition, we designed a reverse attention feature fusion module (RAFM) to enhance the effective boundary information gradually. To validate the performance of our proposed network, we compared it with other methods on ISIC 2016, ISIC 2018, and PH2 public datasets, and the experimental results show that EAAC-Net has superior segmentation performance under commonly used evaluation metrics.

Abstract Image

EAAC-Net:用于皮损分割的高效自适应注意力和卷积融合网络
准确分割皮肤镜图像中的皮损对于黑色素瘤的定量分析至关重要。虽然现有的医学图像分割方法大大提高了皮损分割的效率,但它们在提取局部特征与全局信息方面仍存在局限性,不能很好地处理具有挑战性的皮损,而且通常参数较多,计算复杂度较高。针对这些问题,本文提出了一种用于皮损分割的高效自适应注意力和卷积融合网络(EAAC-Net)。我们设计了两个并行编码器,其中高效自适应注意力特征提取模块(EAAM)通过构建有向图的邻接矩阵,自适应地建立全局空间依赖性和全局通道依赖性,并能在粗粒度区域级别自适应地过滤掉相关性最小的标记,从而降低自注意力机制的计算复杂度。基于多尺度注意力的高效卷积模块(EMA⋅C)利用多尺度注意力对从卷积层提取的局部特征进行跨空间学习,以增强对细节丰富的局部特征的表示。此外,我们还设计了反向注意力特征融合模块(RAFM),以逐步增强有效的边界信息。为了验证我们提出的网络的性能,我们在 ISIC 2016、ISIC 2018 和 PH2 公共数据集上将其与其他方法进行了比较,实验结果表明,在常用的评估指标下,EAAC-Net 具有更优越的分割性能。
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