首页> 外文会议>International Maghreb Meeting of the Conference on Sciences and Techniques of Automatic Control and Computer Engineering MI-STA >Feature fusion using the Local Binary Pattern Histogram Fourier and the Pyramid Histogram of Feature fusion using the Local Binary Pattern Oriented Gradient in iris recognition
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Feature fusion using the Local Binary Pattern Histogram Fourier and the Pyramid Histogram of Feature fusion using the Local Binary Pattern Oriented Gradient in iris recognition

机译:使用本地二进制图案直方图傅立叶和金字塔直方图的特征融合使用虹膜识别中的本地二进制模式面向梯度的特征融合

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Recently, more researchers have been interested in the fusion of many features of biometric modality. The real problems of the world are to find answers due to their assistance in finding solutions to a host of current real-world problems. Sufficient data is available in scheme that is easily accessible and can be put together into a feature vector. A combination of local Binary Pattern Histogram Fourier (LBP-HF) descriptor and the Pyramid Histogram of Oriented Gradient (PHOG) is concentrated on in this research, histogram bins are now made distinctive. Classifications may be hamper due to the fact that several features may result in problems. In order to find a solution to this difficulty, Principal Component Analysis (PCA) should be applied in order to minimize the size of the vector dimensionality of the iris features. The set of random samples of the compound features is setup to generate several weak multiple Support Vector Machine (SVM) classifiers and can be fused into a powerful digestion rule. Using the challenging CASIA–v4 database when experiments were conducted to determine the approach utility. It was found that the proposed work has excellent findings when the approach was evaluated against existing methods.
机译:最近,更多的研究人员对生物识别方式的许多功能的融合感兴趣。世界的真正问题是由于他们的帮助来寻找对当前现实世界问题的解决方案的帮助。可以在方案中提供足够的数据,该方案可以易于访问,并且可以组合在一起。在本研究中集中了局部二进制图案直方图傅立叶(LBP-HF)描述符和定向梯度(PHOG)的金字塔直方图的组合,直方图箱现在变得独特。由于几个特征可能导致问题可能导致问题,分类可能是妨碍。为了找到解决这种困难的解决方案,应该应用主成分分析(PCA)以最小化虹膜特征的矢量维度的大小。该组复合特征的随机样本设置为为生成多个弱多个支持向量机(SVM)分类器,并且可以融合到强大的消化规则中。进行实验时使用具有挑战性的Casia-V4数据库以确定方法效用。有人发现,当对现有方法评估该方法时,拟议的工作具有出色的结果。

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