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POSE-INDEXED BASED MULTI-VIEW METHOD FOR FACE ALIGNMENT

机译:基于索引索引的面向对准的多视图方法

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This paper presents a novel pose-indexed based multi-view (PIMV) face alignment framework. Most of the current cascaded regression face alignment methods generally start with a mean shape. However, when the initial shape is far from the ground truth, the performance significantly deteriorates. Our approach aims to obtain a preferable initial shape from a pose-indexed shape searching space. This space is established by a series of pose-shape pairs which are generally treated as mappings from poses to face shapes. Each shape in this space corresponds to one view which is used as an index of the shape. Subsequently, the index shape is employed as the initial shape for the following iterative stages. The powerful shape-initialization method effectively prevents the local optima problem caused by poor initialization in prediction. Experiments demonstrate that our approach outperforms previous methods on challenging datasets with large pose variations, occlusions and illuminations.
机译:本文介绍了一种基于新型索引索引的多视图(PIMV)面向对准框架。大多数当前的级联回归面对准方法通常以平均形状开始。然而,当初始形状远离地面真相时,性能显着恶化。我们的方法旨在从姿势索引形状搜索空间获得优选的初始形状。该空间由一系列姿势形状对建立,这通常被视为从姿势到面部形状的映射。该空间中的每个形状对应于一个视图,该视图用作形状的索引。随后,索引形状用作以下迭代阶段的初始形状。强大的形状初始化方法有效地防止了通过预测较差造成的初始化造成的本地最佳问题。实验表明,我们的方法优于以前的方法在具有大姿势变化,闭塞和照明的具有挑战性的数据集。

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