通过定制卷积神经网络传输生物医疗信号的自动编码器

Usha Muniraju, Thangamuthu Senthil Kumaran
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引用次数: 0

摘要

生物医学信号的实时传输极其困难,必须使用云和物联网(IoT)基础设施。安全也是一个重要的考虑因素,然而,为了实现这一目标,我们开发了一种重构方法,将整个信号作为输入,只输入主要部分,然后对整个信号进行编码,然后传送到目的地。在没有任何信号衰减的情况下,利用重构技术将其解锁。关键的困难在于,一旦输入信号准备传输,如何管理传感器网络。这涉及到极高的网络能耗和准确的数据收集问题。压缩传感技术提高了数据重建的准确性。本研究中提出的系统卷积神经网络(PS-CNN)是一个结合了特征选择和自动编码器的集成模型。为了生成对特定任务最有用的特征,我们的算法最终可以将合适的任务单元从无关任务中分离出来。
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An auto-encoder bio medical signal transmission through custom convolutional neural network
The transmission of biomedical signals in real-time is extremely difficult and necessitates the use of cloud and internet of things (IoT) infrastructure. Security is also an important consideration, however, to achieve this, a reconstruction method is developed where the entire signal is fed as an input, just the primary portion, the entire signal is taken then encoded, and then deliver to the destination. It is unlocked using a reconstruction technique without any signal attenuation. The key difficulty is how to manage the sensor network once the input is prepared for transmission. This has problems with extremely high network energy consumption and accurate data collection. The accuracy of data reconstruction through is improved by compressive sensing. The lifespan of the network as a whole could be extended, in this study; the proposed proposed system convolutional neural network (PS-CNN) is an integrated model that combines feature selection and auto-encoder. In order to produce the most useful features for particular tasks, our algorithm can eventually separate the appropriate task units from the irrelevant tasks.
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