Hybrid super resolution using refined face logs

Kamal Nasrollahi, T. Moeslund
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引用次数: 7

Abstract

Super resolution algorithms are necessary for improving the quality of low resolution video sequences from surveillance cameras. These algorithms have two main problems: first, they hardly can improve the quality of their inputs by factors bigger than two. Second, applying them to real video sequences usually produces unstable and noisy output. The proposed system in this paper deals with these two problems. The latter, which is due to the unavoidable registration errors of video sequences, is dealt with by using a face quality assessment technique. A combination of different types of super resolution algorithms in a hybrid system is used to cope with the former. The system is tested using real world videos from uncontrolled environments and the results are promising.
混合超分辨率使用精细面测井
超分辨率算法是提高监控摄像机低分辨率视频序列质量的必要条件。这些算法有两个主要问题:首先,它们几乎不能通过大于2的因子来提高输入的质量。其次,将它们应用于真实的视频序列通常会产生不稳定和有噪声的输出。本文提出的系统解决了这两个问题。后者是由于视频序列不可避免的配准错误,使用人脸质量评估技术来处理。在混合系统中使用不同类型的超分辨率算法来解决前者。该系统使用来自非受控环境的真实世界视频进行了测试,结果很有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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