I-Privacy Photo: Face Recognition and Filtering

Amal Almansour, Ghada Alsaeedi, Haifaa Almazroui, Huda Almuflehi
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引用次数: 1

Abstract

The ever-increasing popularity of Online Social Networks (OSNs) sites for posting and sharing photos and videos has led to unprecedented concerns on privacy violation. The available Online social networking (OSNs) sites offer a limited degree of privacy protection solutions. Most of the solutions focus on conditional access control meaning, allowing users to control who can access the shared photos and videos. This research study attempts to address this issue and study the scenario when a user shares a photo and video containing individuals other than himself/herself (public-level photos and videos). For privacy-preserving, the proposed system intends to support an automated human face recognition and filtering for public-level photos and videos. Our proposed approach takes into account the content of a photo and makes use of face filtering as a strategy to increase privacy while still allowing users to share photos. First, the proposed system automatically identifies a person face frame from a digital image or video. Next, it compares the detected face features to each face vectors stored in the application database. After face recognition step completed, the proposed system filters all un-known persons in the image. Conventual Neural Network (CNN) has been used for face detection step, while deep learning facial embedding algorithms has been used for the recognition. Both have shown high accuracy results in addition to the capability of being executed in real-time. For face filtering, Gaussian algorithm has been used for face blurring as it has been considered a very fast real-time algorithm which allow the user to control the blurring degree. Based on the obtained results after testing the system using three different datasets, we can conclude that our system can detect and recognize the faces in photos and videos using the improved Conventual Neural Network (CNN) for face detection with 91.3% accuracy and K-Nearest Neighbor (KNN) for the face recognition with 96.154% accuracy using I-Privacy dataset.
i -隐私照片:人脸识别和过滤
随着上传、分享照片和视频的网络社交网络(sns)日益普及,人们对侵犯个人隐私的担忧达到了前所未有的程度。现有的在线社交网络(Online social networking, osn)站点提供的隐私保护解决方案程度有限。大多数解决方案都侧重于条件访问控制,允许用户控制谁可以访问共享的照片和视频。本研究试图解决这个问题,并研究当用户分享包含他/她以外的个人的照片和视频(公共级照片和视频)时的场景。为了保护隐私,拟议的系统打算支持自动人脸识别和过滤公共级别的照片和视频。我们提出的方法考虑了照片的内容,并利用面部过滤作为一种策略来增加隐私,同时仍然允许用户分享照片。首先,该系统从数字图像或视频中自动识别人脸帧。然后,将检测到的人脸特征与存储在应用程序数据库中的每个人脸向量进行比较。在人脸识别步骤完成后,该系统对图像中所有未知的人进行过滤。人脸检测步骤采用了卷积神经网络(CNN),人脸识别步骤采用了深度学习人脸嵌入算法。除了实时执行的能力外,两者都显示出高精度的结果。对于人脸滤波,高斯算法被用于人脸模糊,因为它被认为是一种非常快速的实时算法,允许用户控制模糊程度。基于三种不同数据集的测试结果,我们可以得出结论,我们的系统使用改进的卷积神经网络(CNN)进行人脸检测和识别,准确率为91.3%,使用I-Privacy数据集进行k -最近邻(KNN)进行人脸识别,准确率为96.154%。
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