SPLGMLMay 11, 2019

ECG Identification under Exercise and Rest Situations via Various Learning Methods

arXiv:1905.04442v12 citations
Originality Synthesis-oriented
AI Analysis

This addresses a gap in biometric security for applications requiring reliable identification during physical activity, but it is incremental as it applies existing methods to new data without introducing novel techniques.

The paper tackled the problem of ECG-based human identification (ECGID) by evaluating performance under both exercise and rest situations, finding that existing methods perform well at rest but fail to provide satisfying identification during exercise, exposing a deficiency in current approaches.

As the advancement of information security, human recognition as its core technology, has absorbed an increasing amount of attention in the past few years. A myriad of biometric features including fingerprint, face, iris, have been applied to security systems, which are occasionally considered vulnerable to forgery and spoofing attacks. Due to the difficulty of being fabricated, electrocardiogram (ECG) has attracted much attention. Though many works have shown the excellent human identification provided by ECG, most current ECG human identification (ECGID) researches only focus on rest situation. In this manuscript, we overcome the oversimplification of previous researches and evaluate the performance under both exercise and rest situations, especially the influence of exercise on ECGID. By applying various existing learning methods to our ECG dataset, we find that current methods which can well support the identification of individuals under rests, do not suffice to present satisfying ECGID performance under exercise situations, therefore exposing the deficiency of existing ECG identification methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes