Adaptive Deep Convolutional GAN for Fingerprint Sample Synthesis

Oleksandr Striuk, Yuriy Kondratenko
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引用次数: 2

Abstract

Real biometric fingerprint samples belong to the category of personal data, and therefore their usage for deep learning model training may have certain limitations. Artificially generated fingerprint images do not relate to a real person and can be used freely (“privacy-friendly”). Synthesized fingerprint samples are of interest for applied research: biological (papillary lines structure and alteration), forensic (computer fingerprint identification, reconstruction, and restoration of damaged samples), technological (various methods of biometric security). Generation of artificial fingerprints that accurately reproduce the textural features of real fingerprints could be a difficult task. In this paper, we present a deep learning framework — Adaptive Deep Convolutional Generative Adversarial Network (ADCGAN) — that we have developed and researched, and which has demonstrated the ability to generate realistic fingerprint samples that are similar to real ones in terms of their feature spectrum. ADCGAN makes it possible to conduct fingerprint research, without restrictions related to the confidential nature of biometric data.
用于指纹样本合成的自适应深度卷积GAN
真实的生物特征指纹样本属于个人数据的范畴,因此将其用于深度学习模型训练可能存在一定的局限性。人工生成的指纹图像与真人无关,可以自由使用(“隐私友好”)。合成指纹样本是应用研究的兴趣:生物学(乳头线结构和改变),法医(计算机指纹识别,重建和恢复受损样本),技术(各种生物识别安全方法)。生成能够准确再现真实指纹纹理特征的人工指纹可能是一项艰巨的任务。在本文中,我们提出了一个深度学习框架-自适应深度卷积生成对抗网络(ADCGAN) -我们已经开发和研究,并且已经证明了生成真实指纹样本的能力,这些样本在特征谱方面与真实指纹样本相似。ADCGAN使进行指纹研究成为可能,而不受生物特征数据机密性的限制。
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