基于cnn的图像光容积脉搏波识别方法

Yang Lv, Haoyuan Gao, Rui Wu, Xiao-pei Wu
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引用次数: 0

摘要

生物识别技术因其准确性和方便性而受到广泛关注。然而,常用的生物特征仍然存在不足。面部识别是对隐私的潜在威胁,虹膜识别或心跳识别需要特定的采集设备,导致额外的成本。为了解决这一问题,我们提出了一种新的生物特征识别方法——图像光体积脉搏图(IPPG)。IPPG信号很容易用消费者相机采集,提取IPPG信号的像素平均运算将去除私人面部信息。IPPG信号作为一种生命体征,使用非生物假体难以模拟。我们构建了一个基于cnn的IPPG识别(ID-IPPG)来验证IPPG信号在人体识别中的性能。在包含12个受试者的IPPG信号数据集上,该模型的准确率达到97.3%。此外,该模型可以有效地进行活体检测。结果表明,IPPG信号包含个体生理信息,ID-IPPG具有较高的识别准确性和安全性。
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CNN-Based Human Identification Method Using Image Photoplethysmographic
Biometrics has received extensive attention due to its accuracy and convenience. However, commonly used biometric features still have deficiencies. Facial recognition is a potential threat to privacy, and iris recognition or heartbeat recognition requires specific acquisition equipment, resulting in additional costs. To address this issue, we proposed a novel biometric identification method using image photoplethysmographic (IPPG). IPPG signal is easy collection with a consumer camera and the pixel-averaging operation to extract IPPG signal will remove private facial information. As a vital sign, IPPG signal is difficult to fake using abiotic prostheses. We constructed a CNN-based identification with IPPG (ID-IPPG) to verify the performance of IPPG signals in human identification. The proposed model achieves 97.3% accuracy on IPPG signals dataset containing 12 subjects. Moreover, the model can effectively perform in living body detection. The results demonstrate that IPPG signals contain individual physiological information and the ID-IPPG has high accuracy and security for human identification.
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