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Face Alignment by Explicit Shape Regression

机译:通过显式形状回归进行人脸对齐

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摘要

We present a very efficient, highly accurate, “Explicit Shape Regression” approach for face alignment. Unlike previous regression-based approaches, we directly learn a vectorial regression function to infer the whole facial shape (a set of facial landmarks) from the image and explicitly minimize the alignment errors over the training data. The inherent shape constraint is naturally encoded into the regressor in a cascaded learning framework and applied from coarse to fine during the test, without using a fixed parametric shape model as in most previous methods. To make the regression more effective and efficient, we design a two-level boosted regression, shape indexed features and a correlation-based feature selection method. This combination enables us to learn accurate models from large training data in a short time (20 min for 2,000 training images), and run regression extremely fast in test (15 ms for a 87 landmarks shape). Experiments on challenging data showthat our approach significantly outperforms the state-of-the-art in terms of both accuracy and efficiency.
机译:我们提出了一种非常有效,高度准确的“显式形状回归”方法来进行面部对齐。与以前的基于回归的方法不同,我们直接学习矢量回归函数以从图像中推断出整个面部形状(一组面部标志),并显着最小化训练数据上的对齐误差。固有的形状约束自然会在级联学习框架中编码到回归器中,并在测试过程中从粗糙到精细应用,而无需像大多数以前的方法那样使用固定的参数形状模型。为了使回归更加有效和高效,我们设计了两级增强回归,形状索引特征和基于相关性的特征选择方法。这种组合使我们能够在短时间内(20分钟获取2,000张训练图像)从大型培训数据中学习准确的模型,并在测试中以极快的速度进行回归(对于87个地标形状,只需15毫秒)。在具有挑战性的数据上进行的实验表明,在准确性和效率方面,我们的方法明显优于最新技术。

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