Semantic-Based Optimization of Deep Learning for Efficient Real-Time Medical Image Segmentation

Zhenkun Wei, Jia Liu, Yu Yao
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Abstract

In response to the critical need for advanced solutions in medical imaging segmentation, particularly for real-time applications in diagnostics and treatment planning, this study introduces SM-UNet. This novel deep learning architecture efficiently addresses the challenge of real-time, accurate medical image segmentation by integrating convolutional neural network (CNN) with multilayer perceptron (MLP). The architecture uniquely combines an initial convolutional encoder for detailed feature extraction, MLP module for capturing long-range dependencies, and a decoder that merges global features with high-resolution CNN map. Further optimization is achieved through a tokenization approach, significantly reducing computational demands. Its superior performance is confirmed by evaluations on standard datasets, showing interaction times drastically lower than comparable networks—between 1/6 to 1/10, and 1/25 compared to SOTA models. These advancements underscore SM-UNet's potential as a groundbreaking tool for facilitating real-time, precise medical diagnostics and treatment strategies.
基于语义的深度学习优化,实现高效的实时医学图像分割
为了满足医学影像分割领域对先进解决方案的迫切需求,尤其是诊断和治疗计划中的实时应用,本研究引入了 SM-UNet。这种新颖的深度学习架构通过将卷积神经网络(CNN)与多层感知器(MLP)相结合,有效地解决了实时、准确的医学影像分割难题。该架构独特地结合了用于详细特征提取的初始卷积编码器、用于捕捉长距离依赖关系的 MLP 模块,以及将全局特征与高分辨率 CNN 地图合并的解码器。通过标记化方法实现了进一步优化,大大降低了计算需求。在标准数据集上进行的评估证实了它的卓越性能,显示其交互时间大大低于同类网络--介于 1/6 到 1/10 之间,与 SOTA 模型相比仅为 1/25。这些进步凸显了 SM-UNet 作为一种开创性工具的潜力,可促进实时、精确的医疗诊断和治疗策略。
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