CVMay 29, 2018

Face Recognition in Low Quality Images: A Survey

arXiv:1805.11519v363 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of identifying faces in low-quality images for applications like video surveillance, but is incremental as it reviews existing work.

This paper provides a comprehensive survey of low-resolution face recognition (LRFR) methods from the past five years, analyzing techniques like super-resolution and domain learning, and comparing results from synthetic and unconstrained datasets.

Low-resolution face recognition (LRFR) has received increasing attention over the past few years. Its applications lie widely in the real-world environment when high-resolution or high-quality images are hard to capture. One of the biggest demands for LRFR technologies is video surveillance. As the the number of surveillance cameras in the city increases, the videos that captured will need to be processed automatically. However, those videos or images are usually captured with large standoffs, arbitrary illumination condition, and diverse angles of view. Faces in these images are generally small in size. Several studies addressed this problem employed techniques like super resolution, deblurring, or learning a relationship between different resolution domains. In this paper, we provide a comprehensive review of approaches to low-resolution face recognition in the past five years. First, a general problem definition is given. Later, systematically analysis of the works on this topic is presented by catogory. In addition to describing the methods, we also focus on datasets and experiment settings. We further address the related works on unconstrained low-resolution face recognition and compare them with the result that use synthetic low-resolution data. Finally, we summarized the general limitations and speculate a priorities for the future effort.

Foundations

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