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      An Automatic Face Hiding System based on the Deep Learning Technology

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      https://www.riss.kr/link?id=A106526380

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      다국어 초록 (Multilingual Abstract)

      As social network service platforms grow and one-person media market expands, people upload their own photos and/or videos through multiple open platforms. However, it can be illegal to upload the digital contents containing the faces of others on the...

      As social network service platforms grow and one-person media market expands, people upload their own photos and/or videos through multiple open platforms. However, it can be illegal to upload the digital contents containing the faces of others on the public sites without their permission. Therefore, many people are spending much time and effort in editing such digital contents so that the faces of others should not be exposed to the public. In this paper, we propose an automatic face hiding system called ‘autoblur’, which detects all the unregistered faces and mosaic them automatically. The system has been implemented using the GitHub MIT open-source ‘Face Recognition’ which is based on deep learning technology. In this system, two dozens of face images of the user are taken from different angles to register his/her own face. Once the face of the user is learned and registered, the system detects all the other faces for the given photo or video and then blurs them out. Our experiments show that it produces quick and correct results for the sample photos.

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      목차 (Table of Contents)

      • Abstract
      • 1. INTRODUCTION
      • 2. RELATED WORK
      • 2.1 Hello Mirror Project using Openface
      • 2.2 Application Zao using DeepFake
      • Abstract
      • 1. INTRODUCTION
      • 2. RELATED WORK
      • 2.1 Hello Mirror Project using Openface
      • 2.2 Application Zao using DeepFake
      • 3. OUR METHOD
      • 3.1 Face Registration (Training Data Learning)
      • 3.2 Automatic Image Conversion (Editing Test Data)
      • 4. EXPERIMENTAL RESULTS
      • 5. CONCLUSION
      • ACKNOWLEDGEMENTThis work was supported by a research
      • REFERENCES
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