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Eye localization in low and standard definition content with application to face matching

机译:低清晰度和标准清晰度内容中的眼睛定位及其在面部匹配中的应用

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In this paper we address the problem of eye localization for the purpose of face matching in low and standard definition image and video content. In addition to an explorative study that aimed at discovering the effect of eye localization accuracy on face matching performance, we also present a probabilistic eye localization method based on well-known multi-scale local binary patterns (LBPs). These patterns provide a simple but powerful spatial description of texture, and are robust to the noise typical to low and standard definition content.rnThe extensive evaluation involving multiple eye localizers and face matchers showed that the shape of the eye localizer error distribution has a big impact on face matching performance. Conditioned by the error distribution shape and the minimum required eye localization accuracy, eye localization can boost the performance of naive face matchers and allow for more efficient face matching without degrading its performance. The evaluation also showed that our proposed method has superior accuracy with respect to the state-of-the-art on eye localization, and that it fulfills the criteria for improving the face matching performance and efficiency mentioned above.
机译:在本文中,我们针对低分辨率和标准清晰度图像和视频内容中的人脸匹配目的,解决了眼睛定位问题。除了旨在发现眼睛定位精度对面部匹配性能的影响的探索性研究之外,我们还提出了一种基于众所周知的多尺度局部二值模式(LBP)的概率眼睛定位方法。这些图案提供了简单而强大的纹理空间描述,并且对低和标清内容所特有的噪声具有鲁棒性。rn涉及多个眼部定位器和脸部匹配器的广泛评估表明,眼部定位器误差分布的形状具有很大的影响面部匹配性能。以误差分布形状和所需的最低眼部定位精度为条件,眼部定位可以提高朴素的脸部匹配器的性能,并在不降低其性能的情况下实现更有效的脸部匹配。评估还表明,相对于最新的眼睛定位技术,我们提出的方法具有更高的准确性,并且它满足了上述改善面部匹配性能和效率的标准。

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