基于改进型 U 型网络的皮损图像分割技术

IF 2.1 Q3 ROBOTICS
Yuhang Zhao, Tianxing Yan, Yaermaimaiti Yilihamu
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引用次数: 0

摘要

皮损分割是帮助我们诊断皮肤癌的重要步骤。然而,皮损形状多变、边界模糊、颜色各异,这给准确分割皮损带来了挑战。本文提出了一种基于残差 U 网的增强型深度信息融合(ED-ResUnet)。首先,将编码部分改进为残差网络结构,通过堆叠残差块获得更多特征信息。其次,设计了通道洗牌混合扩张卷积模块来增加感受野,使网络更加关注深层特征信息,加强上下文信息的传输。然后,在编码器中引入上下文融合模块和极化自注意模块,抑制干扰信息,保留有效的病变位置信息。最后,在 ISIC 2017 皮肤镜图像数据集上的实验结果表明,所提算法分割结果的骰子系数达到 87.43%,比原始 U-Net 网络高 8.81%,比 UNet++ 网络高 5.7%。它能有效地分割黑色素瘤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Skin lesion image segmentation based on improved U-shaped network

Skin lesion image segmentation based on improved U-shaped network

Skin lesion segmentation is an important step to help us in skin cancer diagnosis. However, skin lesions have variable shapes, fuzzy boundaries, and various colors, which bring challenges to the accurate segmentation of skin lesions. In this paper, we propose an Enhanced Deep Information Fusion based on residual U-net (ED-ResUnet). Firstly, the coding part is improved into a residual network structure, and more feature information is obtained by stacking residual blocks. Secondly, a Channel shuffling hybrid dilated convolution module is designed to increase the receptive field, so that the network pays more attention to deep feature information and strengthens the transmission of context information. Then, the context fusion module and Polarized Self-Attention module are introduced into the encoder to suppress interference information and retain effective lesion location information. Finally, the experimental results on the ISIC 2017 dermoscopy image dataset show that the Dice Coefficient of the segmentation results of the proposed algorithm reaches 87.43%, which is 8.81% higher than that of the original U-Net network and 5.7% higher than that of the UNet++ network. It can segment melanoma effectively.

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来源期刊
CiteScore
3.80
自引率
5.90%
发文量
50
期刊介绍: The International Journal of Intelligent Robotics and Applications (IJIRA) fosters the dissemination of new discoveries and novel technologies that advance developments in robotics and their broad applications. This journal provides a publication and communication platform for all robotics topics, from the theoretical fundamentals and technological advances to various applications including manufacturing, space vehicles, biomedical systems and automobiles, data-storage devices, healthcare systems, home appliances, and intelligent highways. IJIRA welcomes contributions from researchers, professionals and industrial practitioners. It publishes original, high-quality and previously unpublished research papers, brief reports, and critical reviews. Specific areas of interest include, but are not limited to:Advanced actuators and sensorsCollective and social robots Computing, communication and controlDesign, modeling and prototypingHuman and robot interactionMachine learning and intelligenceMobile robots and intelligent autonomous systemsMulti-sensor fusion and perceptionPlanning, navigation and localizationRobot intelligence, learning and linguisticsRobotic vision, recognition and reconstructionBio-mechatronics and roboticsCloud and Swarm roboticsCognitive and neuro roboticsExploration and security roboticsHealthcare, medical and assistive roboticsRobotics for intelligent manufacturingService, social and entertainment roboticsSpace and underwater robotsNovel and emerging applications
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