医学图像分割深度学习模型中边界检测的再思考

Yi-Mou Lin, Dong-Ming Zhang, Xiaori Fang, Yufan Chen, Kwang-Ting Cheng, Hao Chen
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引用次数: 4

摘要

医学图像分割是医学图像分析领域的一项基础性工作。本文提出了一种新的网络结构,即卷积、变压器和算子(CTO)。CTO采用卷积神经网络(cnn)、视觉变换(ViT)和显式边界检测算子的组合来实现高识别精度,同时保持精度和效率之间的最佳平衡。所提出的CTO遵循标准的编码器-解码器分割范例,其中编码器网络包含用于捕获本地语义信息的流行CNN主干,以及用于集成远程依赖关系的轻量级ViT助手。为了提高边界学习能力,提出了一种边界引导解码器网络,该网络使用由专用边界检测算子获得的边界掩码作为显式监督来指导解码学习过程。在六个具有挑战性的医学图像分割数据集上对该方法的性能进行了评估,表明CTO在具有竞争力的模型复杂性的情况下实现了最先进的精度。
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Rethinking Boundary Detection in Deep Learning Models for Medical Image Segmentation
Medical image segmentation is a fundamental task in the community of medical image analysis. In this paper, a novel network architecture, referred to as Convolution, Transformer, and Operator (CTO), is proposed. CTO employs a combination of Convolutional Neural Networks (CNNs), Vision Transformer (ViT), and an explicit boundary detection operator to achieve high recognition accuracy while maintaining an optimal balance between accuracy and efficiency. The proposed CTO follows the standard encoder-decoder segmentation paradigm, where the encoder network incorporates a popular CNN backbone for capturing local semantic information, and a lightweight ViT assistant for integrating long-range dependencies. To enhance the learning capacity on boundary, a boundary-guided decoder network is proposed that uses a boundary mask obtained from a dedicated boundary detection operator as explicit supervision to guide the decoding learning process. The performance of the proposed method is evaluated on six challenging medical image segmentation datasets, demonstrating that CTO achieves state-of-the-art accuracy with a competitive model complexity.
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