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首页> 外文期刊>International journal of computational vision and robotics >Viewpoint invariant model for face detection
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Viewpoint invariant model for face detection

机译:用于人脸检测的视点不变模型

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摘要

In this work, we have developed a face invariant model for accurate face detection in images where faces can present viewpoint changes. The face model is based on learning a relation between local features and a face invariant. A probabilistic model learned from a training set captures the relationship between the appearance of facial features and the geometry of face invariant. It is then used to infer a face instance in new image. We use the local invariant features which have the high performances to distinguish objects appearance. The facial features are recognised by an appearance classifier which combines an EM classification and a probabilistic matching. Then, the geometrical parameters are predicted to locate face invariants and a hierarchical clustering method corrects the geometric error of the position of invariants. The geometric classification uses an aggregate value to construct clusters of invariants. The probabilities of facial appearance features are computed to select the best cluster and thus to locate face with arbitrary viewpoint in image. We evaluate our generic invariant by testing it in face detection experiments on different databases. The experimental results show that our face invariant model gives highly accurate face localisation.
机译:在这项工作中,我们开发了一种人脸不变模型,用于在图像中人脸可以呈现视点变化的情况下进行准确的人脸检测。人脸模型基于学习局部特征和人脸不变性之间的关系。从训练集中学习到的概率模型捕获了面部特征的外观与面部不变几何之间的关系。然后用于推断新图像中的人脸实例。我们使用具有高性能的局部不变特征来区分对象外观。面部特征由外观分类器识别,该外观分类器结合了EM分类和概率匹配。然后,预测几何参数以定位面不变性,并且层次聚类方法校正不变性位置的几何误差。几何分类使用合计值构造不变量的聚类。计算面部外观特征的概率以选择最佳聚类,从而在图像中定位具有任意视点的面部。我们通过在不同数据库的人脸检测实验中对其进行测试来评估通用不变式。实验结果表明,我们的人脸不变模型可提供高度准确的人脸定位。

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