Just Noticeable Difference Modeling for Face Recognition System

计算机科学 残余物 人工智能 解码方法 编码器 冗余(工程) 模式识别(心理学) 特征(语言学) 面子(社会学概念) 计算机视觉 算法 社会科学 语言学 操作系统 哲学 社会学
作者
Yu Tian,Zhangkai Ni,Baoliang Chen,Shurun Wang,Shiqi Wang,Hanli Wang,Sam Kwong
出处
期刊:Cornell University - arXiv [Cornell University]
被引量:3
标识
DOI:10.48550/arxiv.2209.05856
摘要

High-quality face images are required to guarantee the stability and reliability of automatic face recognition (FR) systems in surveillance and security scenarios. However, a massive amount of face data is usually compressed before being analyzed due to limitations on transmission or storage. The compressed images may lose the powerful identity information, resulting in the performance degradation of the FR system. Herein, we make the first attempt to study just noticeable difference (JND) for the FR system, which can be defined as the maximum distortion that the FR system cannot notice. More specifically, we establish a JND dataset including 3530 original images and 137,670 compressed images generated by advanced reference encoding/decoding software based on the Versatile Video Coding (VVC) standard (VTM-15.0). Subsequently, we develop a novel JND prediction model to directly infer JND images for the FR system. In particular, in order to maximum redundancy removal without impairment of robust identity information, we apply the encoder with multiple feature extraction and attention-based feature decomposition modules to progressively decompose face features into two uncorrelated components, i.e., identity and residual features, via self-supervised learning. Then, the residual feature is fed into the decoder to generate the residual map. Finally, the predicted JND map is obtained by subtracting the residual map from the original image. Experimental results have demonstrated that the proposed model achieves higher accuracy of JND map prediction compared with the state-of-the-art JND models, and is capable of saving more bits while maintaining the performance of the FR system compared with VTM-15.0.

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