Automated Brain Tumor Segmentation Using Attention gate Inception UNet with Guided Decoder

A. P., Adersh V R
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引用次数: 1

Abstract

Brain tumor segmentation technology is a crucial step for the detection and treatment of MRI brain tumors. Tumors can occur in various locations and can be of any size or form. The use of skip connections in MRI brain tumor segmentation approach based on U-Net architecture helps to incorporate low-level and high-level feature information and has recently gained popularity. By introducing an attention mechanism into the UNet architecture, the performance of local feature expression and medical image segmentation can be enhanced. In this paper, we present an innovative deep learning architecture called Attention gate Inception UNet with Guided Decoder for brain tumor segmentation. The backbone of the model is a popular segmentation method called U-Net architecture. While dealing with small-scale tumors, the U-Net network has low segmentation accuracy. Therefore several modifications are made, which results in the integration of attention gates and inception block together with a guided decoder. A sequence of attention gate modules are introduced to the skip connection, that focus on a selected part of an image while ignoring the others. The inception module used will help us to extract further characteristics at each layer. The proposed architecture has the ability of explicitly guiding each decoder layer’s learning process and it is supervised by using individual loss function, allowing them to produce efficient
带引导解码器的注意门起始UNet自动脑肿瘤分割
脑肿瘤分割技术是MRI脑肿瘤检测和治疗的关键步骤。肿瘤可以发生在不同的部位,可以是任何大小或形式。在基于U-Net架构的MRI脑肿瘤分割方法中使用跳跃连接有助于整合低级和高级特征信息,近年来得到了广泛的应用。通过在UNet体系结构中引入注意机制,可以提高局部特征表达和医学图像分割的性能。在本文中,我们提出了一种创新的深度学习架构,称为注意力门起始UNet与引导解码器,用于脑肿瘤分割。该模型的主干是一种流行的分割方法,称为U-Net体系结构。在处理小规模肿瘤时,U-Net网络的分割精度较低。因此,我们做了一些改进,将注意力门和起始块集成到一个引导解码器中。跳跃式连接中引入了一系列注意门模块,它们只关注图像的选定部分,而忽略其他部分。所使用的初始模块将帮助我们在每一层提取进一步的特征。所提出的结构能够明确地指导每个解码器层的学习过程,并通过使用单个损失函数进行监督,从而使它们产生高效的学习过程
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