Face deception detection system adversarial sample generation method based on an adversarial generative network

An adversarial sample and deception detection technology, applied in the fields of computer vision and artificial intelligence, can solve problems such as the inability to effectively resist adversarial sample attacks, and achieve the effects of simple structure, improved security and reliability, and improved robustness.

Active Publication Date: 2019-11-12
CHINA-SINGAPORE INT JOINT RES INST
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, for face spoofing detection, no large-scale generation of adversarial examples has been reported
This makes it difficult for human decept

Method used

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  • Face deception detection system adversarial sample generation method based on an adversarial generative network
  • Face deception detection system adversarial sample generation method based on an adversarial generative network
  • Face deception detection system adversarial sample generation method based on an adversarial generative network

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Embodiment

[0050] This embodiment discloses a method for generating an adversarial sample for a face spoofing detection system based on an adversarial generation network, including two parts: model training and model application.

[0051] The following takes the REPLAY-ATTACK database as an example to introduce the implementation process of the method for generating an adversarial example in this embodiment in detail. The database consists of 1300 videos with a resolution of 320×240. Use the training set data in the database to train the adversarial perturbation generator, and then use the test set data for testing. The experiment was carried out on the Win10 system, using Python version 3.6.7, Keras version 2.2.4, Keras backend version 1.12.0 TensorFlow, CUDA version 9.0.0, and cudnn version 7.1.4. The overall implementation process is as follows figure 1 As shown, the specific implementation steps are as follows:

[0052] The first step is to build a discriminator D for judging whet...

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Abstract

The invention discloses a face deception detection system adversarial sample generation method based on an adversarial generative network, and the method can achieve the quick generation of adversarial samples in a large scale according to an original sample image through employing the adversarial generative network technology. Meanwhile, the glasses shape mask is utilized, so that the added countermeasure disturbance is limited in the range of the glasses shape, the actual physical attack can be conveniently carried out in subsequent actual manufacturing, and the countermeasure sample has higher practical value. On the other hand, different face deception detection networks or traditional methods are accessed to the overall training framework, so that adversarial samples for different detection methods can be conveniently generated. The problem that the face spoofing detection system lacks enough adversarial samples in the training process is effectively solved. The confrontation samples of the face spoofing detection method can be automatically generated on a large scale, the difficulty of obtaining a large number of confrontation samples for network training is reduced, and thesafety and reliability of the face spoofing detection method and the face recognition system are improved.

Description

technical field [0001] The invention relates to the technical fields of computer vision and artificial intelligence, in particular to a method for generating an adversarial sample for a face spoofing detection system based on an adversarial generation network. Background technique [0002] Face recognition technology has the characteristics of non-intrusive identity and interactivity. It is more and more widely used in user identity authentication. The technology associated with face recognition has also become a popular research direction in the field of computer vision. But at the same time, with the development of technology, the risk of face recognition system being attacked by spoofing is increasing day by day. In order to ensure the reliability of the face detection system, more and more attention has been paid to face spoofing detection technology. In recent years, with the development of artificial intelligence technology, adversarial attacks against face spoofing d...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06K9/46G06K9/62G06N3/04
CPCG06V40/171G06V40/18G06V40/172G06V40/40G06V10/56G06N3/045G06F18/214
Inventor 蔡楚鑫胡永健王宇飞刘琲贝
Owner CHINA-SINGAPORE INT JOINT RES INST
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