基于辐射能量和曲线变换的红外人脸识别

Zhihua Xie, Shiqian Wu, Guodon Liu, Zhijun Fang
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引用次数: 7

摘要

提出了一种基于辐射能转换和曲波变换的红外人脸识别方法。首先,根据Stefan-Boltzmann定律将热图像转换为辐射能图像,得到热面稳定特征;其次,与小波变换和其他经典变换相比,曲波变换具有更好的方向和边缘表示能力。受图像稀疏表示中曲波的这些吸引人的属性的启发,我们引入了将图像分解到曲波子带中提取主要代表特征的思想,从而节省了计算复杂度和存储单元。最后,选择最近邻分类器得到系统识别结果。实验表明,与传统的基于PCA的系统相比,该系统具有更好的性能,并且需要更少的计算量和存储单元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Infrared Face Recognition Based on Radiant Energy and Curvelet Transformation
In this paper, a infrared face recognition method using radiant energy conversion and Curvelet transformation is proposed. Firstly, to get the stable feature of thermal face, thermal images are converted into radiant energy images according to Stefan-Boltzmann's law. Secondly, Curvelet transform has better directional and edge representation abilities than widely used wavelet transformation and other classic transformations. Inspired by these attractive attributes of Curvelets in sparse representation of the images, we introduce the idea of decomposing images into their curvelet subbands to extract the principal representative feature, which saves the computational complexity and storage units. Finally, the nearest neighbor classifier is chosen to get the system recognition result. The experiments illustrate that compared with traditional PCA based systems, the proposed system has better performance and requires fewer computations and memory units.
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