Detection of Intelligent Tampering in Wireless Electrocardiogram Signals Using Hybrid Machine Learning
Journal:
arXiv
Published Date:
Jul 8, 2025
Abstract
With the proliferation of wireless electrocardiogram (ECG) systems for health
monitoring and authentication, protecting signal integrity against tampering is
becoming increasingly important. This paper analyzes the performance of CNN,
ResNet, and hybrid Transformer-CNN models for tamper detection. It also
evaluates the performance of a Siamese network for ECG based identity
verification. Six tampering strategies, including structured segment
substitutions and random insertions, are emulated to mimic real world attacks.
The one-dimensional ECG signals are transformed into a two dimensional
representation in the time frequency domain using the continuous wavelet
transform (CWT). The models are trained and evaluated using ECG data from 54
subjects recorded in four sessions 2019 to 2025 outside of clinical settings
while the subjects performed seven different daily activities. Experimental
results show that in highly fragmented manipulation scenarios, CNN,
FeatCNN-TranCNN, FeatCNN-Tran and ResNet models achieved an accuracy exceeding
99.5 percent . Similarly, for subtle manipulations (for example, 50 percent
from A and 50 percent from B and, 75 percent from A and 25 percent from B
substitutions) our FeatCNN-TranCNN model demonstrated consistently reliable
performance, achieving an average accuracy of 98 percent . For identity
verification, the pure Transformer-Siamese network achieved an average accuracy
of 98.30 percent . In contrast, the hybrid CNN-Transformer Siamese model
delivered perfect verification performance with 100 percent accuracy.