School of Computer Science and Technology, Beijing Institute of Technology, Beijing 100081, China.
College of Computer and Control Engineering, Minjiang University, Fuzhou 350108, China.
Sensors (Basel). 2024 Aug 6;24(16):5087. doi: 10.3390/s24165087.
In this paper, a novel deep learning method Mamba-RAYOLO is presented, which can improve detection and classification in the processing and analysis of ECG images in real time by integrating three advanced modules. The feature extraction module in our work with a multi-branch structure during training can capture a wide range of features to ensure efficient inference and rich feature extraction. The attention mechanism module utilized in our proposed network can dynamically focus on the most relevant spatial and channel-wise features to improve detection accuracy and computational efficiency. Then, the extracted features can be refined for efficient spatial feature processing and robust feature fusion. Several sets of experiments have been carried out to test the validity of the proposed Mamba-RAYOLO and these indicate that our method has made significant improvements in the detection and classification of ECG images. The research offers a promising framework for more accurate and efficient medical ECG diagnostics.
本文提出了一种新颖的深度学习方法 Mamba-RAYOLO,该方法通过集成三个先进的模块,可以提高心电图图像实时处理和分析中的检测和分类性能。在我们的工作中,特征提取模块在训练期间具有多分支结构,可以捕获广泛的特征,以确保高效的推理和丰富的特征提取。我们提出的网络中使用的注意力机制模块可以动态关注最相关的空间和通道特征,以提高检测准确性和计算效率。然后,可以对提取的特征进行细化,以进行有效的空间特征处理和稳健的特征融合。已经进行了多组实验来测试所提出的 Mamba-RAYOLO 的有效性,这些实验表明,我们的方法在心电图图像的检测和分类方面取得了显著的改进。该研究为更准确和高效的医学 ECG 诊断提供了一个有前途的框架。