Weighted Vote Fusion in prototype random subspace for thermal to visible face recognition

Samira Reyhanian, E. Arbabi
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引用次数: 5

Abstract

The human body, like all other objects with temperature above the absolute zero, emits electromagnetic wave. The emission of infrared electromagnetic wave from the human face produces thermal images. Thus thermal images can be formed even in dark conditions, in which the formation of the visible image is impossible. However, the majority of the stored images in the recognition systems are visible. Thus, matching the thermal probe and visible gallery images can solve the night time face recognition problem. On the other hand, because of the different formation mechanism of these two types of images, there are lots of challenges in the matching process. Prototype random subspace approach is one of the most successful methods in the area of thermal to visible face recognition. In this paper, we have revised the recognition step of prototype random subspace approach by proposing Weighted Vote Fusion scheme. The proposed strategy has been tested on an available data set and the results show about 9% of improvement in recognition rate, comparing to the original approach.
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基于原型随机子空间的加权投票融合热到可见人脸识别
人体和其他温度高于绝对零度的物体一样,会发射电磁波。人脸发射的红外电磁波产生热图像。因此,即使在不可能形成可见光图像的黑暗条件下,热图像也能形成。然而,大多数存储在识别系统中的图像是可见的。因此,将热探头与可见图库图像进行匹配可以解决夜间人脸识别问题。另一方面,由于这两类图像的形成机制不同,在匹配过程中存在很多挑战。原型随机子空间方法是热到可见人脸识别领域最成功的方法之一。本文通过提出加权投票融合方案,对原型随机子空间方法的识别步骤进行了改进。在一个可用的数据集上进行了测试,结果表明,与原始方法相比,该策略的识别率提高了约9%。
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