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3-D Facial Landmark Localization With Asymmetry Patterns and Shape Regression from Incomplete Local Features

机译:具有不对称图案的3D人脸地标定位和不完整局部特征的形状回归

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We present a method for the automatic localization of facial landmarks that integrates nonrigid deformation with the ability to handle missing points. The algorithm generates sets of candidate locations from feature detectors and performs combinatorial search constrained by a flexible shape model. A key assumption of our approach is that for some landmarks there might not be an accurate candidate in the input set. This is tackled by detecting partial subsets of landmarks and inferring those that are missing, so that the probability of the flexible model is maximized. The ability of the model to work with incomplete information makes it possible to limit the number of candidates that need to be retained, drastically reducing the number of combinations to be tested with respect to the alternative of trying to always detect the complete set of landmarks. We demonstrate the accuracy of the proposed method in the face recognition grand challenge database, where we obtain average errors of approximately 3.5 mm when targeting 14 prominent facial landmarks. For the majority of these our method produces the most accurate results reported to date in this database. Handling of occlusions and surfaces with missing parts is demonstrated with tests on the Bosphorus database, where we achieve an overall error of 4.81 and 4.25 mm for data with and without occlusions, respectively. To investigate potential limits in the accuracy that could be reached, we also report experiments on a database of 144 facial scans acquired in the context of clinical research, with manual annotations performed by experts, where we obtain an overall error of 2.3 mm, with averages per landmark below 3.4 mm for all 14 targeted points and within 2 mm for half of them. The coordinates of automatically located landmarks are made available on-line.
机译:我们提出了一种自动定位面部标志的方法,该方法整合了非刚性变形与处理缺失点的能力。该算法从特征检测器生成候选位置集,并执行受柔性形状模型约束的组合搜索。我们方法的一个关键假设是,对于某些地标,输入集中可能没有准确的候选者。通过检测界标的部分子集并推断出缺失的部分子集可以解决此问题,从而最大程度地提高了灵活模型的可能性。该模型处理不完整信息的能力使得可以限制需要保留的候选者的数量,从而相对于尝试始终检测整个地标集的方法而言,可以大大减少要测试的组合的数量。我们在人脸识别大挑战数据库中证明了该方法的准确性,当针对14个突出的人脸地标时,我们获得的平均误差约为3.5毫米。对于这些方法中的大多数,我们的方法会在该数据库中生成迄今为止报告的最准确的结果。通过在Bosphorus数据库上进行的测试证明了对遮挡物和缺少零件的表面的处理,对于包含和不包含遮挡物的数据,我们分别实现了4.81毫米和4.25毫米的总误差。为了调查可能达到的精度极限,我们还报告了在临床研究范围内获得的144个面部扫描数据库的实验结果,并由专家进行了人工注释,得出的平均误差为2.3 mm,平均对于所有14个目标点,每个地标均在3.4毫米以下,对于一半的目标则在2毫米以内。自动定位的地标的坐标可在线获得。

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