基于注意力机制的心电信号分类和运动员健康分析研究

Dong Zhu, Haiyan Zhu
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引用次数: 0

摘要

在运动员的训练和比赛过程中,他们的身体会承受不同程度的负荷和压力。作为一种重要的诊断工具,心电图信号可以深入了解运动员的心脏功能,包括心率、心律和心电活动的变化。通过对心电图读数进行全面检查,我们能够快速识别可能存在的心脏状况或心律不齐,这对保护运动员的心脏健康至关重要。然而,心电信号是高度复杂和多维的。要对这些信号进行准确分类,就必须选择最具代表性和辨别力的特征。然而,这并非易事,如何选择有效的特征仍是一个亟待解决的问题。为解决这一问题,本文提出了 CSNet 分类网络模型。该框架消除了心电信号的干扰,通过直接的网络配置进行属性提取,并结合通道聚焦机制和空间聚焦机制来增强属性表示和分类能力。此外,为了保留心电信号的时间信息,我们引入了门控递归单元(GRU),有助于更好地捕捉信号中的时间模式和依赖关系,从而实现更准确的心电信号分类。
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Study on ECG Signal Classification and Athlete Health Analysis Based on Attention Mechanism
In the training and competition process of athletes, their bodies are subjected to various levels of load and stress. As an important diagnostic tool, ECG signals can provide deep insights into the cardiac function of athletes, including heart rate, rhythm, and changes in cardiac electrical activity. By conducting a thorough examination of ECG readings, we are able to quickly identify possible heart conditions or irregularities, which is essential for preserving the heart health of athletes. However, ECG signals are highly complex and multidimensional. To accurately classify these signals, it is necessary to select the most representative and discriminative features. However, this is not an easy task, and the selection of effective features remains a pressing issue. To address this problem, this paper proposes the CSNet classification network model. This framework eradicates disruptions in electrocardiogram signals, performs attribute extraction via a direct network configuration, and combines channel focus mechanisms and spatial focus mechanisms to enhance attribute representation and categorization capabilities. Furthermore, to retain the temporal information of ECG signals, we introduce the Gated Recurrent Unit (GRU), which helps to better capture temporal patterns and dependencies in the signals, thus enabling more accurate classification of ECG signals.
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