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Detecting Low-Resolution Faces in Video

机译:检测视频中的低分辨率人脸

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摘要

This paper presents a method for the detection of faces (via skin regions) in images where faces may be low-resolution and no assumptions are made about fine facial features being visible. This type of data is challenging because changes in appearance of skin regions occur due to changes in both lighting and resolution. We present a non-parametric classification scheme based on a histogram similarity measure. By comparing performance of commonly-used colour-spaces we find that the YIQ colour space with 16 histogram bins (in both 1 and 2 dimensions) gives the most accurate performance over a wide range of imaging conditions for non-parametric skin classification. We demonstrate better performance of the non-parametric approach vs. colour thresholding and a Gaussian classifier. Face detection is subsequently achieved via a simple aspect-ratio and we show results from indoor and outdoor scenes.
机译:本文提出了一种用于检测图像中人脸(通过皮肤区域)的方法,其中人脸可能是低分辨率的,并且不对可见的精细人脸特征做出任何假设。这种类型的数据具有挑战性,因为皮肤区域外观的变化是由于光照和分辨率的变化而发生的。我们提出了一种基于直方图相似性度量的非参数分类方案。通过比较常用颜色空间的性能,我们发现具有16个直方图块(在1维和2维上)的YIQ颜色空间在针对非参数皮肤分类的各种成像条件下提供了最准确的性能。我们展示了非参数方法相对于颜色阈值和高斯分类器的更好性能。随后通过简单的宽高比实现人脸检测,并显示室内和室外场景的结果。

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