Coded hierarchical dictionary strategy for face recognition efficiency

Mohammed Saaidia, M. Ramdani
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Abstract

Face recognition is the most studied topic in the pattern recognition research field. This is probably due to the multiple useful applications which can be developed for important domains. Such deployed research efforts produced a huge number of methods, techniques and algorithms with different characteristics according to their simplicity, efficiency, robustness and speed. Present work investigates the performances of a simplified technique using a hierarchical classification scheme based on a constructed multi parts dictionary. The elementary features of the constructed dictionary were obtained using the well-known cross-correlation operator applied to the original images and their transformed images known as integral images and Discrete Cosine Transform. Hierarchical classification scheme is used to overcome the fact that this operator has high consumption time cost. The proposed strategy was implemented and tested on the images of the well known ORL and YALE database sets. Practical results demonstrate largely recognizable efficiency and speed characteristics.
编码层次字典策略提高人脸识别效率
人脸识别是模式识别研究领域中研究最多的课题。这可能是由于可以为重要领域开发多个有用的应用程序。这些部署的研究工作产生了大量的方法、技术和算法,根据它们的简单性、效率、鲁棒性和速度,它们具有不同的特征。目前的工作研究了一种简化技术的性能,该技术使用基于构造的多部分字典的分层分类方案。构建的字典的基本特征是使用众所周知的相互关联算子应用于原始图像及其转换图像,称为积分图像和离散余弦变换。采用分层分类方案,克服了该算法耗时大的缺点。在ORL和YALE数据库集的图像上对所提出的策略进行了实现和测试。实际结果表明,效率和速度特性基本可识别。
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