长相相似的人脸识别:初步研究

Hemank Lamba, A. Sarkar, Mayank Vatsa, Richa Singh, A. Noore
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引用次数: 33

摘要

人脸识别的主要挑战之一是设计一种特征提取器和匹配器,以减少类内变化和增加类间变化。特征提取算法必须具有足够的鲁棒性,以提取特定对象的相似特征,而不管其质量、姿势、照明、表情、年龄和伪装的变化。当存在两个具有较低阶级间差异的个体时,即长相相似的个体,问题就会加剧。在这种情况下,这两个个体的类内相似性高于类间差异。本研究探讨了人脸相似问题及其对人类行为和自动人脸识别算法的影响。本研究有三个方面的贡献:首先,我们分析了人类对相似外观的识别能力。其次,将人体识别性能与现有的十种人脸识别算法进行比较,最后提出了一种提高人脸验证精度的算法。分析表明,无论是人类还是自动人脸识别算法都不能有效地识别出相似的人脸。
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Face recognition for look-alikes: A preliminary study
One of the major challenges of face recognition is to design a feature extractor and matcher that reduces the intraclass variations and increases the inter-class variations. The feature extraction algorithm has to be robust enough to extract similar features for a particular subject despite variations in quality, pose, illumination, expression, aging, and disguise. The problem is exacerbated when there are two individuals with lower inter-class variations, i.e., look-alikes. In such cases, the intra-class similarity is higher than the inter-class variation for these two individuals. This research explores the problem of look-alike faces and their effect on human performance and automatic face recognition algorithms. There is three fold contribution in this research: firstly, we analyze the human recognition capabilities for look-alike appearances. Secondly, we compare human recognition performance with ten existing face recognition algorithms, and finally, proposed an algorithm to improve the face verification accuracy. The analysis shows that neither humans nor automatic face recognition algorithms are efficient in recognizing look-alikes.
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