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Machine learning masters the fingerprint to fool biometric systems

合成的指纹可以恶搞的智能手机的手指print sensors

Date:
November 20, 2018
Source:
纽约大学经脉工程学院
Summary:
Fingerprint authentication systems are a widely trusted, ubiquitous form of biometric authentication, deployed on billions of smartphones and other devices worldwide. Yet a new study reveals a surprising level of vulnerability in these systems. Using a neural network trained to synthesize human fingerprints, the research team evolved a fake fingerprint that could potentially fool a touch-based authentication system for up to one in five people.
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FULL STORY

Fingerprint authentication systems are a widely trusted, ubiquitous form of biometric authentication, deployed on billions of smartphones and other devices worldwide. Yet a new study from New York University Tandon School of Engineering reveals a surprising level of vulnerability in these systems. Using a neural network trained to synthesize human fingerprints, the research team evolved a fake fingerprint that could potentially fool a touch-based authentication system for up to one in five people.

Much the way that a master key can unlock every door in a building, these "DeepMasterPrints" use artificial intelligence to match a large number of prints stored in fingerprint databases and could thus theoretically unlock a large number of devices. The research team was headed by NYU Tandon Associate Professor of Computer Science and Engineering Julian Togelius and doctoral student Philip Bontrager, the lead author of the paper, who presented it at the IEEE International Conference of Biometrics: Theory, Applications and Systems, where it won the Best Paper Award.

The work builds on earlier research led by Nasir Memon, professor of computer science and engineering and associate dean for online learning at NYU Tandon. Memon, who coined the term "MasterPrint," described how fingerprint-based systems use partial fingerprints, rather than full ones, to confirm identity. Devices typically allow users to enroll several different finger images, and a match for any saved partial print is enough to confirm identity. Partial fingerprints are less likely to be unique than full prints, and Memon's work demonstrated that enough similarities exist between partial prints to create MasterPrints capable of matching many stored partials in a database. Bontrager and his collaborators, including Memon, took this concept further, training a machine-learning algorithm to generate synthetic fingerprints as MasterPrints. The researchers created complete images of these synthetic fingerprints, a process that has twofold significance. First, it is yet another step toward assessing the viability of MasterPrints against real devices, which the researchers have yet to test; and second, because these images replicate the quality of fingerprint images stored in fingerprint-accessible systems, they could potentially be used to launch a brute force attack against a secure cache of these images.

“仍然是一个stron Fingerprint-based身份验证g way to protect a device or a system, but at this point, most systems don't verify whether a fingerprint or other biometric is coming from a real person or a replica," said Bontrager. "These experiments demonstrate the need for multi-factor authentication and should be a wake-up call for device manufacturers about the potential for artificial fingerprint attacks." This research has applications in fields beyond security. Togelius noted that their Latent Variable Evolution method used here to generate fingerprints can also be used to make designs in other industries -- notably game development. The technique has already been used to generate new levels in popular video games.

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Cite This Page:

纽约大学经脉工程学院. "Machine learning masters the fingerprint to fool biometric systems: Synthetic fingerprints can spoof smartphone fingerprint sensors." ScienceDaily. ScienceDaily, 20 November 2018. .
纽约大学经脉工程学院. (2018, November 20). Machine learning masters the fingerprint to fool biometric systems: Synthetic fingerprints can spoof smartphone fingerprint sensors.ScienceDaily. Retrieved July 5, 2023 from www.koonmotors.com/releases/2018/11/181120125832.htm
纽约大学经脉工程学院. "Machine learning masters the fingerprint to fool biometric systems: Synthetic fingerprints can spoof smartphone fingerprint sensors." ScienceDaily. www.koonmotors.com/releases/2018/11/181120125832.htm (accessed July 5, 2023).

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