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Markov random fields and facial landmarks for handling uncontrolled images of face sketch synthesis

机译:马尔可夫随机场和人脸地标,用于处理人脸素描合成的不受控制的图像

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摘要

Face sketch synthesis has drawn great attention in many computer vision applications such as law enforcement and digital entertainment. The majority of existing face sketch synthesis techniques are exemplar-based techniques, where a set of training photo-sketch pairs are first divided into patches. For an input photo patch from the face to be synthesized, k similar photo patches are found from the training set. The corresponding sketch patch of the best match is then selected to be synthesized. In such techniques, a multiscale Markov random fields (MRF) model is utilized for synthesizing a sketch using candidate sketch patches; having observed that techniques tend to fail with face photos acquired in uncontrolled imaging conditions like pose and lighting variations. For example, some structures along the lower part of the face sketch contour get lost due to ignoring the global face shape information and illumination changes. In this paper, we propose a reliable face sketch synthesis method based on MRF model and facial landmarks, called MRF-FL that can maintain further structures with uncontrolled face photos. Besides matching the input photo with training photo, the input photo and training sketch are also matched based on the facial landmarks so as to enhance face sketch structures around the lower part of face sketch contour. Experimental results showed that the proposed MRF-FL achieves superior performance compared with recent face sketch synthesis methods on CUHK and AR face sketch databases.
机译:人脸草图合成已在许多计算机视觉应用(例如执法和数字娱乐)中引起了极大的关注。现有的大多数面部素描合成技术都是基于示例的技术,其中一组训练照片素描对首先被划分为补丁。对于来自要合成的面部的输入照片补丁,从训练集中找到k个相似的照片补丁。然后选择最佳匹配的相应草图补丁进行合成。在这样的技术中,多尺度马尔可夫随机场(MRF)模型用于使用候选草图补丁合成草图。已经观察到,在不受控的成像条件(例如姿势和光照变化)下采集的面部照片,技术往往会失败。例如,由于忽略全局脸部形状信息和照明变化,脸部轮廓轮廓下部的一些结构丢失了。在本文中,我们提出了一种基于MRF模型和脸部界标的可靠的人脸草图合成方法,称为MRF-FL,该方法可以使用不受控制的人脸照片维护更多结构。除了将输入照片与训练照片进行匹配之外,输入照片和训练草图还基于面部地标进行匹配,以增强围绕面部剪影轮廓下部的面部剪影结构。实验结果表明,与最近的中大和AR人脸素描数据库中的人脸素描合成方法相比,所提出的MRF-FL具有更好的性能。

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