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Super-Resolved Faces for Improved Face Recognition from Surveillance Video

机译:超声脸,用于改善从监视视频的人脸识别

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Characteristics of surveillance video generally include low resolution and poor quality due to environmental, storage and processing limitations. It is extremely difficult for computers and human opera- tors to identify individuals from these videos. To overcome this problem, super-resolution can be used in conjunction with an automated face recognition system to enhance the spatial resolution of video frames containing the subject and narrow down the number of manual verifications performed by the human operator by presenting a list of most likely candidates from the database. As the super-resolution reconstruction process is ill-posed, visual artifacts are often generated as a result. These artifacts can be visually distracting to humans and/or affect machine recognition algorithms. While it is intuitive that higher resolution should lead to improved recognition accuracy, the effects of super-resolution and such artifacts on face recognition performance have not been systematically studied. This paper aims to address this gap while illustrating that super-resolution allows more accurate identification of individuals from low-resolution surveillance footage. The proposed optical flow-based super-resolution method is benchmarked against Baker et al.’s hallucination and Schultz et al.’s super-resolution techniques on images from the Terrascope and XM2VTS databases. Ground truth and interpolated images were also tested to provide a baseline for comparison. Results show that a suitable super-resolution system can improve the discriminability of surveillance video and enhance face recognition accuracy. The experiments also show that Schultz et al.’s method fails when dealing surveillance footage due to its assumption of rigid objects in the scene. The hallucination and optical flow-based methods performed comparably, with the optical flow-based method producing less visually distracting artifacts that interfered with human recognition.
机译:由于环境,储存和处理限制,监控视频的特性通常包括低分辨率和质量差。计算机和人类操作非常困难,以识别这些视频的个人。为了克服这个问题,超分辨率可以与自动面部识别系统结合使用,以增强包含对象的视频帧的空间分辨率,并通过呈现最有可能的列表来缩小由人类运营商执行的手动验证的数量来自数据库的候选人。随着超分辨率的重建过程均为不良,通常产生视觉伪像。这些伪影可以在视觉上分散对人类和/或影响机器识别算法。虽然直观的分辨率应该导致更高的识别准确性,但是,超分辨率和这种伪像对面部识别性能的影响尚未得到系统研究。本文旨在解决这种差距,同时说明超分辨率允许从低分辨率监视镜头更准确地识别个体。所提出的基于光学流量的超分辨率方法是针对Baker等人的基准测试。幻觉和Schultz等人。从Terrascope和XM2VTS数据库的图像上的超分辨率技术。还测试了地面真理和内插图像以提供基线进行比较。结果表明,合适的超分辨率系统可以提高监控视频的可怜性,提高面部识别准确性。实验还表明,Schultz等人。由于其在场景中的刚性物体的假设,在处理监控镜头时,该方法失败。幻觉和光学流动的方法相当,具有基于光学流动的方法,产生较少的视觉分散注意力的伪像,其受到人体识别的伪影。

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