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Adaptive frame selection for improved face recognition in low-resolution videos

机译:自适应帧选择可改善低分辨率视频中的人脸识别

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Performing face detection and identification in low-resolution videos (e.g., surveillance videos) is a challenging task. The task entails extracting an unknown face image from the video and comparing it against identities in the gallery database. To facilitate biometric recognition in such videos, fusion techniques may be used to consolidate the facial information of an individual, available across successive low-resolution frames. For example, super-resolution schemes can be used to improve the spatial resolution of facial objects contained in these videos (image-level fusion). However, the output of the super-resolution routine can be significantly affected by large changes in facial pose in the constituent frames. To mitigate this concern, an adaptive frame selection technique is developed in this work. The proposed technique automatically disregards frames that can cause severe artifacts in the super-resolved output, by examining the optical flow matrices pertaining to successive frames. Experimental results demonstrate an improvement in the identification performance when the proposed technique is used to automatically select the input frames necessary for super-resolution. In addition, improvements in output image quality and computation time are observed. The paper also compares image-level fusion against score-level fusion where the low-resolution frames are first spatially interpolated and the simple sum rule is used to consolidate the match scores corresponding to the interpolated frames. On comparing the two fusion methods, it is observed that score-level fusion outperforms image-level fusion.
机译:在低分辨率视频(例如监视视频)中执行面部检测和识别是一项艰巨的任务。该任务需要从视频中提取未知的面部图像,并将其与图库数据库中的身份进行比较。为了促进此类视频中的生物识别,可以使用融合技术来合并可在连续低分辨率帧中使用的个人面部信息。例如,可以使用超分辨率方案来提高这些视频中包含的面部对象的空间分辨率(图像级融合)。但是,超分辨率例程的输出可能会受到组成帧中面部姿势的较大变化的显着影响。为了减轻这种担忧,在这项工作中开发了一种自适应帧选择技术。通过检查与连续帧有关的光流矩阵,提出的技术会自动忽略可能在超分辨输出中导致严重伪影的帧。实验结果表明,当所提出的技术用于自动选择超分辨率所需的输入帧时,识别性能得到了改善。另外,观察到输出图像质量和计算时间的改善。本文还比较了图像级融合与分数级融合,在分数级融合中首先对低分辨率帧进行了空间插值,并使用简单的求和规则来合并与插值帧相对应的匹配分数。在比较两种融合方法时,观察到分数级融合优于图像级融合。

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