一种针对光照问题的增强人脸识别方法

Cemil Turan, A. Aitimov, B. Kynabay, Aimoldir Aldabergen
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引用次数: 0

摘要

在人脸识别问题中实现的最流行的工具之一是主成分分析(PCA),它成功地应用于机器学习和数据分析。但是,如果图像不规律,并且存在一些影响图像识别精度的因素,例如面部表情的变化,姿势的不同或光线的问题,则该技术可能会出现一些不足。在本工作中,通过结合不同的预处理技术实现不同的方法,在不同的图像光照条件下对它们进行评估和比较。为了使每幅图像具有相同的光照条件,将该方法应用于经过PCA处理的图像。结果表明,通过单独或组合实现这些技术,可以提高人脸识别的准确性。
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An Enhanced Face Recognition Method for Lighting Problem
One of the most popular tool implemented in face recognition issues is Principal Component Analysis (PCA) which is successfully used in machine learning and data analysis. However, if the images are not regular with some factors that affect the image recognition accuracy such as variation of facial expressions, different poses or lighting problems, this technique may show some deficiencies. In this work, different kinds of methods were implemented by combining different preprocessing techniques to evaluate and compare them under different lighting conditions of images. In order to have the same lighting conditions for every image, the methods were applied to them after PCA processing. As a result, the face recognition accuracy was improved by means of implementing the techniques separately or in combination.
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