[基于轻量级网络和知识蒸馏策略的心脏磁共振图像分割]。

Q4 Medicine
Zeqi Liu, Ning Wang, Chong Zhang, Guohui Wei
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引用次数: 0

摘要

为了解决应用于心脏磁共振成像(MRI)图像分割的深度学习网络中存在大量网络参数和大量浮点运算的问题,本文提出了一种轻量级的扩展并行卷积U-Net (DPU-Net),以减少网络参数的数量和浮点运算的数量。此外,采用多尺度自适应向量知识蒸馏(MAVKD)训练策略从教师网络中提取潜在知识,从而提高了DPU-Net的分割精度。该网络采用独特的卷积通道变化方式来减少参数数量,并结合残差块和扩展卷积来缓解参数减少可能带来的梯度爆炸问题和空间信息损失。研究结果表明,该网络在减少参数数量和提高浮点运算效率方面取得了较大的进步。将该网络应用于心脏自动诊断挑战(ACDC)的公共数据集,骰子系数达到91.26%。研究结果验证了所提出的轻量化网络和知识蒸馏策略的有效性,为医学图像分割领域的深度学习提供了可靠的轻量化思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Cardiac magnetic resonance image segmentation based on lightweight network and knowledge distillation strategy].

To address the issue of a large number of network parameters and substantial floating-point operations in deep learning networks applied to image segmentation for cardiac magnetic resonance imaging (MRI), this paper proposes a lightweight dilated parallel convolution U-Net (DPU-Net) to decrease the quantity of network parameters and the number of floating-point operations. Additionally, a multi-scale adaptation vector knowledge distillation (MAVKD) training strategy is employed to extract latent knowledge from the teacher network, thereby enhancing the segmentation accuracy of DPU-Net. The proposed network adopts a distinctive way of convolutional channel variation to reduce the number of parameters and combines with residual blocks and dilated convolutions to alleviate the gradient explosion problem and spatial information loss that might be caused by the reduction of parameters. The research findings indicate that this network has achieved considerable improvements in reducing the number of parameters and enhancing the efficiency of floating-point operations. When applying this network to the public dataset of the automatic cardiac diagnosis challenge (ACDC), the dice coefficient reaches 91.26%. The research results validate the effectiveness of the proposed lightweight network and knowledge distillation strategy, providing a reliable lightweighting idea for deep learning in the field of medical image segmentation.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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