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LiteNet: Lightweight Neural Network for Detecting Arrhythmias at Resource-Constrained Mobile Devices

机译:LiteNet:用于在资源受限的移动设备上检测心律不齐的轻型神经网络

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摘要

By running applications and services closer to the user, edge processing provides many advantages, such as short response time and reduced network traffic. Deep-learning based algorithms provide significantly better performances than traditional algorithms in many fields but demand more resources, such as higher computational power and more memory. Hence, designing deep learning algorithms that are more suitable for resource-constrained mobile devices is vital. In this paper, we build a lightweight neural network, termed LiteNet which uses a deep learning algorithm design to diagnose arrhythmias, as an example to show how we design deep learning schemes for resource-constrained mobile devices. Compare to other deep learning models with an equivalent accuracy, LiteNet has several advantages. It requires less memory, incurs lower computational cost, and is more feasible for deployment on resource-constrained mobile devices. It can be trained faster than other neural network algorithms and requires less communication across different processing units during distributed training. It uses filters of heterogeneous size in a convolutional layer, which contributes to the generation of various feature maps. The algorithm was tested using the MIT-BIH electrocardiogram (ECG) arrhythmia database; the results showed that LiteNet outperforms comparable schemes in diagnosing arrhythmias, and in its feasibility for use at the mobile devices.
机译:通过使应用程序和服务更靠近用户运行,边缘处理可提供许多优势,例如响应时间短和网络流量减少。在许多领域中,基于深度学习的算法提供的性能明显优于传统算法,但需要更多资源,例如更高的计算能力和更多的内存。因此,设计更适合资源受限的移动设备的深度学习算法至关重要。在本文中,我们构建了一个名为LiteNet的轻量级神经网络,该网络使用深度学习算法设计来诊断心律不齐,作为示例来说明我们如何为资源受限的移动设备设计深度学习方案。与具有同等精度的其他深度学习模型相比,LiteNet具有多个优势。它需要较少的内存,导致较低的计算成本,并且在资源受限的移动设备上进行部署更可行。它可以比其他神经网络算法更快地进行训练,并且在分布式训练过程中需要较少的跨不同处理单元的通信。它在卷积层中使用大小不一的过滤器,这有助于生成各种特征图。使用MIT-BIH心电图(ECG)心律失常数据库对该算法进行了测试;结果表明,LiteNet在诊断心律不齐以及在移动设备上使用的可行性方面优于同类方案。

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