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DeepLip: block-based lip pixel detection by deep neural networks

机译:DEEPLIP:深神经网络的基于块的唇唇像素检测

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摘要

This paper presents an effective lip pixel detection method based on blocks and deep neural networks. Since only-rough localization of a pair of lips is a trivial task, we use a rectangle that loosely bounds two lips as an input region of interest for lip detection. For each pixel in the rectangle region we generate a block whose center is at the pixel, and the pixel is classified into either a lip or non-lip pixel by exploiting the pixels in the block. Deep neural networks are trained using a sufficient number of labeled blocks obtained from a quite tractable number of labeled images. As a result, lip pixels are detected with high accuracy despite negligible labeling effort. Experimental results demonstrate the effectiveness of the presented method. We show that even single-minute training can outperform the mouth map with the best threshold.
机译:本文介绍了基于块和深神经网络的有效唇缘像素检测方法。由于一对嘴唇的只有粗糙的定位是一种琐碎的任务,因此我们使用一个松散地将两个嘴唇界定为唇唇检测的输入区域的矩形。对于矩形区域中的每个像素,我们生成中心位于像素处的块,并且通过利用块中的像素来分类为唇唇或非唇像素。使用从相当易于标记的图像获得的足够数量的标记块进行深度神经网络训练。结果,尽管标记努力可忽略不计,但唇部像素被高精度检测到。实验结果表明了呈现的方法的有效性。我们表明即使单分钟培训也可以越优越口地图,具有最佳阈值。

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