ECG Compression using Decomposed Transform for E-Healthcare

Sudeshna Baliarsingh, Prakash Kumar Panda, M. Mohanty
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引用次数: 0

Abstract

Ahstract-E- Healthcare in this digital world supports patients as well as physicians that satisfy smart healthcare services. However, data exchange and storage aremajor challenges in this scenario. It needs to compress data for effective communication. In this work, the authors have taken an approach to compress the cardiac signal for effective communication. The data is collected from the Physionet database (Records no. 100 and 202) for experimentation. Also, to verify the proposed method the data from Mendeley Database is considered and tested for both the ECG signals(Record no. 202). Initially, the collected data is preprocessed with the SavitzkyGolay filter to eliminate the noise and to smoothen the signal. In one step the signal is decomposed with Empirical Mode Decomposition (EMD) to find out the useful components. Further, the decomposed signals are compressed with DCT which is coded with the said Huffman coding method. The method proved to be efficient and is explained in the result section along with a comparison The proposed technique is suitable for the application and has been verified for e-healthcare systems.
基于分解变换的电子医疗心电压缩
摘要- e -数字世界中的医疗保健为满足智能医疗保健服务的患者和医生提供支持。然而,数据交换和存储是此场景中的主要挑战。它需要压缩数据以实现有效的通信。在这项工作中,作者采取了一种方法来压缩心脏信号,以实现有效的通信。数据从Physionet数据库(记录号:100和202)进行实验。此外,为了验证所提出的方法,考虑了Mendeley数据库的数据,并对心电信号(记录号:202)。首先,用SavitzkyGolay滤波器对采集到的数据进行预处理,以消除噪声并使信号平滑。第一步用经验模态分解(EMD)对信号进行分解,找出有用的分量;进一步,用DCT对分解后的信号进行压缩,DCT用所述霍夫曼编码方法进行编码。该方法被证明是有效的,并在结果部分进行了解释,并进行了比较。所提出的技术适用于该应用程序,并已在电子医疗保健系统中进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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