首页> 外文会议>2011 3rd International Conference on Electronics Computer Technology >Architecture for precisive face recognition system deploying quantization with multiresolution curvelet and training with support vector machine
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Architecture for precisive face recognition system deploying quantization with multiresolution curvelet and training with support vector machine

机译:精确人脸识别系统的架构,该系统采用多分辨率Curvelet进行量化并使用支持向量机进行训练

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The proposed research approach addresses various issues in face recognition as well as in computer vision which were signified and researched by multiresolution concepts like wavelet transforms. But survey also shows that only wavelets are not the factors for ideal description of an image as they have very rough directional representations and are absolutely not anisotropic. With the recent developments in Curvelet Transform, which has the potential to overcome these flaws of wavelets, this proposed idea highlights an advance technique of face recognition which is based on multiresolution curvelet. The application will quantize 8 bit image to 4 bit and 2 bit representation in initial phase. In the next phase, the curvelet transform will be applied to all 3 different resolved versions of the image. In the final phase, all the 15 sets of co-efficients were used to train different support vector machines. Finally, the accuracy of the application will be evaluated by identification from different sets of facial image for the proposed robust face recognition system.
机译:所提出的研究方法解决了人脸识别以及计算机视觉中的各种问题,这些问题已通过小波变换等多分辨率概念进行了研究。但是调查还显示,只有小波不是图像理想描述的因素,因为它们具有非常粗糙的方向表示并且绝对不是各向异性的。随着Curvelet变换的最新发展,它有可能克服小波的这些缺陷,因此,提出的想法突出了基于多分辨率Curvelet的人脸识别的先进技术。该应用程序将在初始阶段将8位图像量化为4位和2位表示形式。在下一阶段,curvelet变换将应用于图像的所有3种不同的解析版本。在最后阶段,所有15组系数都用于训练不同的支持向量机。最后,对于所提出的鲁棒的面部识别系统,将通过从不同的面部图像集中进行识别来评估应用程序的准确性。

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