人脸成分袋:一种人脸图像处理的数据充实方法

I. Suwardi, Achmad Imam Kistijantoro, Tjokorda Agung Budi Wirayuda, Ginar Santika Niwanputri
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引用次数: 0

摘要

面部图像是一种原始数据,可以被处理以产生各种信息/表示,特别是对于计算机视觉,模式识别和生物识别。此外,身份识别,表情识别和访客人口统计计算是可以通过处理面部图像生成的应用程序。为了进行人脸图像处理,需要一种人脸检测机制来隔离人脸区域(感兴趣区域roi)。以往的研究一般将人脸图像视为一个统一体,进行特征提取和识别的进一步处理。本文提出了基于Viola-Jones的人脸检测后处理,生成一组人脸成分作为下一个特征提取和识别过程的数据表示。根据人脸的几何规律和黄金分割率进行后处理,使检测更加准确。实验结果表明,该方法在开发部分的准确率达到96.88%,在测试部分的准确率达到92.52%(精密度95.32%,召回率96.62%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bag of Facial Components: A Data Enrichment Approach for Face Image Processing
Facial images are one of the raw data that can be processed to produce various information/representations, especially for computer vision, pattern recognition, and biometrics. Moreover, identity recognition, expression recognition and visitor demographic calculations are applications that can be generated through the processing of facial images. In order to perform face image processing, a face detection mechanism is needed to isolate the face area (region-of-interest-ROI). Previous research generally views facial images as unity for further processing with feature extraction techniques and recognition. This paper proposes post-processing from face detection (Viola-Jones based) to produce a bag of facial components as a data representation for the next processes which are feature extraction and recognition. The post-processing is done based on the geometric rules of the face and golden ratio to produce more accurate detection. From the experiment, the proposed method achieves 96.88% of accuracy on the development part whilst the accuracy of testing part reaches 92.52% (with precision 95.32% and recall 96.62%).
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