Author:
Mishra Ashish Ranjan,Kumar Rakesh,Gupta Vibha,Prabhu Sameer,Upadhyay Richa,Chhipa Prakash Chandra,Rakesh Sumit,Mokayed Hamam,Liwicki Marcus,Liwicki Foteini Simistira,Saini Rajkumar
Abstract
ABSTRACTNoninvasive electroencephalography (EEG) is a method for measuring electrical brain activity from the surface of the scalp. Recent developments in artificial intelligence accelerate the automatic recognition of brain patterns, allowing more reliable and increasingly faster Brain-Computer interfaces, including biometric applications. Biometric research is also focusing on multimodal systems using EEG along with other modalities. This paper presents a new multimodalSignEEG v1.0dataset based on EEG and hand-drawn signatures from 70 subjects. EEG signals and hand-drawn signatures have been collected withEmotiv InsightandWacom Onesensors, respectively. The multimodal data consists of three paradigms with increasing brain functioning: (i) visualizing a signature image, (ii) doing a signature in mind, and (iii) physically drawing a signature. Extensive experiments have been done in order to provide a solid baseline with machine learning classifiers. We release the raw, pre-processed data and easy-to-follow implementation details.
Publisher
Cold Spring Harbor Laboratory
Reference26 articles.
1. Biometric identification;Commun. ACM,2000
2. Tolosana, R. et al. Icdar 2021 competition on on-line signature verification. In Document Analysis and Recognition–ICDAR 2021: 16th International Conference, Lausanne, Switzerland, September 5–10, 2021, Proceedings, Part IV 16, 723–737 (Springer, 2021).
3. Svc-ongoing: Signature verification competition;Pattern Recognit,2022
4. Two-stage biometric authentication method using thought activity brain waves;Int. journal neural systems,2008
5. Fusion of neuro-signals and dynamic signatures for person authentication;Sensors,2019