首页> 外文会议>Asian Conference on Computer Vision(ACCV 2006) pt.2; 20060113-16; Hyderabad(IN) >Histogram Features-Based Fisher Linear Discriminant for Face Detection
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Histogram Features-Based Fisher Linear Discriminant for Face Detection

机译:基于直方图特征的Fisher线性判别式人脸检测

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The face pattern is described by pairs of template-based histogram and Fisher projection orientation under the paradigm of Ad-aBoost learning in this paper. We assume that a set of templates are available first. To avoid making strong assumptions about distributional structure while still retaining good properties for estimation, the classical statistical model, histogram, is used to summarize the response of each template. By introducing a novel "integral histogram image", we can compute histograms rapidly. Then we turn to Fisher linear discriminant for each template to project histograms from d-dimensional to one-dimensional subspace. Best features, used to describe face pattern, are selected by AdaBoost learning. The results of preliminary experiments demonstrate that the selected features are much more powerful to represent the face pattern than the simple rectangle features used by Viola and Jones and some variants.
机译:在Ad-aBoost学习范式下,通过基于模板的直方图和Fisher投影方向对描述人脸模式。我们假设首先有一组模板。为了避免对分布结构做出强力假设,同时仍保留良好的估计属性,我们使用经典的统计模型直方图来汇总每个模板的响应。通过引入新颖的“积分直方图图像”,我们可以快速计算直方图。然后,我们针对每个模板转向Fisher线性判别式,以将直方图从d维子空间投影到一维子空间。 AdaBoost学习会选择用于描述脸部图案的最佳功能。初步实验的结果表明,所选择的特征比起Viola和Jones和一些变体使用的简单矩形特征,更能代表面部图案。

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