Table 1: EER and EID for the proposed approach over 30 runs where exclusive training and test sets were randomly selected.
m 1 2 3 4 5
EER 9.39% ±0.19 6.05% ±0.36 4.55% ±0.41 3.13% ±0.41 2.75% ±0.29
EID 17.62% ±0.59 11.94% ±0.96 8.71% ±0.85 6.72% ±0.82 5.61% ±0.94
Table 2: EER for other behavioral biometric approaches.
Method Key Stroke Mouse Voice Gait Eye Gaze EEG ECG V
2
EER ∼ 4% ∼ 10% ∼ 10% ∼ 5% ∼ 5% ∼ 10% ∼ 5%
9 CONCLUSIONS
In this paper we have presented an overview of the
base principles and applications of ECG biometrics.
If we analyze the ECG in a multibiometrics perspec-
tive, it sets an important ground for novel biomet-
ric applications, especially those related to continu-
ous user recognition. Results so far are encouraging,
which have led us to create an initial prototype sys-
tem (Figure 6). Immediate applications of our tech-
nology include scenarios of low security and low user
throughput, such as recognition in mobile phones,
laptop computers, cable TV interfaces, and user-tuned
in-game experience. If combined with other modali-
ties, there are several use cases where the ECG stands
as an important add-on. For example high security
applications, we can envision scenarios where user
recognition is periodically performed using a hard
biometrics such as the fingerprint, ECG data is col-
lected simultaneously with the fingerprint to extract
a heartbeat waveform template, and after the initial
identity validation using the hard biometric modality,
the ECG continues to enable the validation of the user.
ACKNOWLEDGEMENTS
This work was funded by Fundac¸
˜
ao para a
Ci
ˆ
encia e Tecnologia (FCT) under the grants
SFRH/BD/65248/2009 and SFRH/PROTEC/49512/
2009, and by the Instituto de Telecomunicac¸
˜
oes un-
der the grant ”Android Biometric System”.
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