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Polar fusion technique analysis for evaluating the performances of image fusion of thermal and visual images for human face recognition

机译:用于评估人类脸部识别热敏图像融合性能的极性融合技术分析

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This paper presents a comparative study of two different methods, which are based on fusion and polar transformation of visual and thermal images. Here, investigation is done to handle the challenges of face recognition, which include pose variations, changes in facial expression, partial occlusions, variations in illumination, rotation through different angles, change in scale etc. To overcome these obstacles we have implemented and thoroughly examined two different fusion techniques through rigorous experimentation. In the first method log-polar transformation is applied to the fused images obtained after fusion of visual and thermal images whereas in second method fusion is applied on log-polar transformed individual visual and thermal images. After this step, which is thus obtained in one form or another, Principal Component Analysis (PCA) is applied to reduce dimension of the fused images. Log-polar transformed images are capable of handling complicacies introduced by scaling and rotation. The main objective of employing fusion is to produce a fused image that provides more detailed and reliable information, which is capable to overcome the drawbacks present in the individual visual and thermal face images. Finally, those reduced fused images are classified using a multilayer perceptron neural network. The database used for the experiments conducted here is Object Tracking and Classification Beyond Visible Spectrum (OTCBVS) database benchmark thermal and visual face images. The second method has shown better performance, which is 95.71% (maximum) and on an average 93.81% as correct recognition rate.
机译:本文介绍了两种不同方法的比较研究,基于视觉和热图像的融合和极性转换。在这里,进行调查以处理面部识别的挑战,包括姿态变化,面部表情的变化,部分闭塞,照明的变化,通过不同角度的旋转,按比例变化等,以克服我们所实施的这些障碍,我们已经实施和彻底检查了这些障碍通过严格的实验两种不同的融合技术。在第一种方法中,对数极变换应用于在融合的视觉和热图像融合之后获得的融合图像,而在第二种方法融合中施加在对数 - 极性变换的单独视觉和热图像上。在该步骤之后,其以一种形式获得或另一种形式获得,应用主成分分析(PCA)以减少融合图像的尺寸。日志极性转换图像能够处理通过缩放和旋转引入的复杂性。采用融合的主要目的是产生一种提供更详细和可靠的信息的融合图像,该信息能够克服各个视觉和热面图像中存在的缺点。最后,使用多层的Perceptron神经网络对那些减少的融合图像进行分类。用于此处进行的实验的数据库是超出可见频谱(OTCBVS)数据库基准热量和视觉面图像的对象跟踪和分类。第二种方法表现出更好的性能,即95.71%(最大值),平均为93.81%,为正确的识别率。

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