首页> 外文会议>ECCV International Workshop on Biometric Authentication(BioAW 2004); 20040515; Prague; CZ >Statistical Learning of Evaluation Function for ASM/AAM Image Alignment
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Statistical Learning of Evaluation Function for ASM/AAM Image Alignment

机译:ASM / AAM图像对准评估功能的统计学习

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摘要

Alignment between the input and target objects has great impact on the performance of image analysis and recognition system, such as those for medical image and face recognition. Active Shape Models (ASM) and Active Appearance Models (AAM) provide an important framework for this task. However, an effective method for the evaluation of ASM/AAM alignment results has been lacking. Without an alignment quality evaluation mechanism, a bad alignment cannot be identified and this can drop system performance. In this paper, we propose a statistical learning approach for constructing an evaluation function for face alignment. A nonlinear classification function is learned from a set of positive (good alignment) and negative (bad alignment) training examples to effectively distinguish between qualified and un-qualified alignment results. The AdaBoost learning algorithm is used, where weak classifiers are constructed based on edge features and combined into a strong classifier. Several strong classifiers is learned in stages using bootstrap samples during the training, and are then used in cascade in the test. Experimental results demonstrate that the classification function learned using the proposed approach provides semantically more meaningful scoring than the reconstruction error used in AAM for classification between qualified and un-qualified face alignment.
机译:输入对象与目标对象之间的对齐方式对图像分析和识别系统(例如用于医学图像和面部识别的系统)的性能影响很大。活动形状模型(ASM)和活动外观模型(AAM)为该任务提供了重要的框架。但是,缺乏一种有效的方法来评估ASM / AAM对准结果。如果没有对齐质量评估机制,就无法确定对齐错误,这会降低系统性能。在本文中,我们提出了一种统计学习方法,用于构建面部对齐的评估函数。从一组正(良好对齐)和负(不良对齐)训练示例中学习非线性分类函数,以有效地区分合格和不合格的对准结果。使用AdaBoost学习算法,其中基于边缘特征构造弱分类器,并将其组合为强分类器。在训练过程中使用引导程序样本分阶段学习了几个强分类器,然后在测试中级联使用。实验结果表明,与在AAM中用于在合格和不合格面部对齐之间进行分类的重构错误相比,使用该方法学习的分类功能在语义上提供了更有意义的评分。

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