An Approach of Context Ontology for Robust Face Recognition Against Illumination Variations

M. RezaulBashar, Yan Li, P. Rhee
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Abstract

This paper proposes a face recognition method that is robust against image variations due to arbitrary lighting condition. Though many researches have been carried out on face recognition system, however; there exist some limitations such as illumination, pose, alignment, occlusion, etc. This paper presents a context ontology model making a robust face recognition system on different illumination situations. Our proposed system works on two phases: environmental context ontology building (modelling) and recognition using context ontology. Context ontology is built using context acquisition, context learning and context categorization. The recognition approach is implemented on illumination variant face recognition that takes identified context as input and performs recognition with usual process such as preprocessing, feature extraction, learning, and recognition. We have tested the recognition performance of our proposed model with an international standard FERET face database (our produced synthesized FERET images) and we have achieved a success rate of more than 92%.
一种针对光照变化的上下文本体鲁棒人脸识别方法
提出了一种对任意光照条件下的图像变化具有鲁棒性的人脸识别方法。尽管对人脸识别系统进行了大量的研究,但是;存在一些限制,如照明,姿势,对齐,遮挡等。提出了一种基于上下文本体的人脸识别模型,实现了不同光照条件下的鲁棒人脸识别系统。我们提出的系统分为两个阶段:环境上下文本体构建(建模)和使用上下文本体进行识别。语境本体是通过语境获取、语境学习和语境分类来构建的。该识别方法是在光照变人脸识别中实现的,该方法以已识别的环境为输入,通过预处理、特征提取、学习和识别等常规过程进行识别。我们用国际标准的FERET人脸数据库(我们制作的合成FERET图像)测试了我们提出的模型的识别性能,我们取得了超过92%的成功率。
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