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Reversible ECG Data Hiding: Analysis and Comparison of ANN, Regression SVM and Random Forest Regression

机译:可逆ECG数据隐藏:ANN,回归SVM和随机森林回归的分析和比较

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The telemedicine industry is rapidly shaping the medical facilities; it starts from a basic task like booking appointments and goes up to complex tasks like diagnosis and surgery. The telemedicine industry is flourishing and a huge amount of patient data is flowing over internet. In such scenario it is very important to ensure integrity and safety of medical data. In this paper a reversible data hiding technique for ECG (electrocardiogram) signals is discussed and performance analysis of random forest (RF) regression, regression SVM (support vector machine) and artificial neural network (ANN) is done. RF, SVM, and ANN are used to predict the ECG samples, and watermark is embedded using prediction error expansion (PEE). The performances of all the models are measured using SNR (signal to noise ratio), (PRD) (percentage residual difference), & NCC (normalized cross-correlation). Models are tested for different embedding strength, ANN model has superior performance over SVM and RF. Due to reversible nature of the scheme, original signal can be completely recovered from watermarked signal.
机译:远程医疗行业正在迅速塑造医疗设施。它从诸如预约的基本任务开始,再到诸如诊断和手术的复杂任务。远程医疗行业蓬勃发展,并且大量的患者数据通过互联网流动。在这种情况下,确保医疗数据的完整性和安全性非常重要。本文讨论了一种用于ECG(心电图)信号的可逆数据隐藏技术,并对随机森林(RF)回归,回归SVM(支持向量机)和人工神经网络(ANN)进行了性能分析。 RF,SVM和ANN用于预测ECG样本,并使用预测误差扩展(PEE)嵌入水印。所有模型的性能都是使用SNR(信噪比),(PRD)(残差百分比)和NCC(归一化互相关)测量的。对模型进行了不同的嵌入强度测试,ANN模型具有优于SVM和RF的性能。由于该方案具有可逆性,因此可以从加水印的信号中完全恢复原始信号。

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