Fan-beam Projection-based Feature Extraction for Facial Expression Recognition

A. Alphonse
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Abstract

This paper presents a novel method of feature extraction using Fan beam projection-based data. The Fanbeam projection covers the image completely and hence gathers all the important information. Even though the image quality is distorted, this type of feature extraction method helps to gather all the important information as there is a huge volume of projection data. Also, the use of multiple detectors speeds up the entire process. All the projections of the image together form a sinogram image which is unique for each facial expression image. Hence, the sinogram image is divided into grids and the histogram formation results in a feature vector for each image. The classification of these feature vectors using Radial Basis Function-based Extreme learning Machine (RBF-ELM) results in high classification accuracy for all the datasets.
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基于扇束投影的面部表情识别特征提取
提出了一种基于扇形梁投影的特征提取方法。Fanbeam投影完全覆盖了图像,因此收集了所有重要信息。尽管图像质量失真,但由于投影数据量巨大,这种特征提取方法有助于收集所有重要信息。此外,使用多个检测器加快了整个过程。图像的所有投影共同形成一个正弦图图像,每个面部表情图像都是唯一的。因此,将正弦图图像划分为网格,直方图的形成为每个图像生成一个特征向量。使用基于径向基函数的极限学习机(RBF-ELM)对这些特征向量进行分类,对所有数据集的分类精度都很高。
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