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首页> 外文期刊>Journal of marine science and technology >ACTIVE APPEARANCE MODEL ALGORITHM WITH K-NEAREST NEIGHBOR CLASSIFIER FOR FACE POSE ESTIMATION
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ACTIVE APPEARANCE MODEL ALGORITHM WITH K-NEAREST NEIGHBOR CLASSIFIER FOR FACE POSE ESTIMATION

机译:带有K-NEAREST NEIGHBOR分类器的主动外观模型算法用于人脸姿势估计

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摘要

In this paper, a face pose estimation (FPE) algorithm using active appearance model (AAM) with a k-nearest neighbor (kNN) classifier is presented. AAM is a model-based image representation method used to describe non-rigid visual objects, with both shape and texture variations, using a mean vector and linear combinations of a set of variation modes. Since AAM is a deformable model, it has several variations. Owing to the variations, the model is adjusted to the input test face image using iterative searching and fitting. The error, which measures the difference between the model and a test image, is minimized with the proposed searching algorithm. The face pose is then estimated using the distances between the landmark points in the AAM model with a kNN classifier. Experimental results demonstrate that the proposed FPE algorithm can fit the face location with different face poses, with or without a hat, even wearing glasses, and identify the face pose accurately.
机译:本文提出了一种基于主动外观模型(AAM)和k最近邻(kNN)分类器的人脸姿态估计(FPE)算法。 AAM是一种基于模型的图像表示方法,用于使用均值矢量和一组变化模式的线性组合来描述形状和纹理均变化的非刚性视觉对象。由于AAM是可变形模型,因此它具有多种变体。由于这些变化,使用迭代搜索和拟合将模型调整为输入的测试面部图像。利用所提出的搜索算法,可以最小化测量模型与测试图像之间差异的误差。然后使用带有kNN分类器的AAM模型中界标点之间的距离来估算人脸姿势。实验结果表明,所提出的FPE算法可以适合不同脸部姿势,戴或不戴帽子,甚至戴眼镜的人脸位置,并能准确识别出脸部姿势。

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