Phase efficient neural network using Curvelet features for face recognition

U. Qayyum
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引用次数: 3

Abstract

This paper presents a novel scheme for face recognition application, by utilizing curved singularities obtained from curvelet transform and trained on phase efficient neural network. The phase efficient neural network is formed by processing the statistical descriptor and smooth coefficients of curvelet transform with neural network and then post-process with phase only correlation (POC). Neural network minimizes the search space of face subjects by yielding the response values to POC. The match/mismatch recognition accuracy is based upon the peak detection from the POC surface. The amalgamation of two recognition techniques on curvelet features have enabled us to look into the new dimension of not only improving the accuracy of neural network but also to decrease the computational and time cost of phase only correlation.
基于Curvelet特征的相位高效神经网络人脸识别
本文提出了一种利用曲线变换得到的曲线奇异点并在相位有效神经网络上训练的人脸识别新方案。利用神经网络对曲线变换的统计描述子和光滑系数进行处理,然后进行相位相关后处理,形成相位高效神经网络。神经网络通过生成人脸识别的响应值来最小化人脸识别对象的搜索空间。匹配/不匹配识别的精度基于POC表面的峰值检测。两种曲线特征识别技术的融合,使我们在提高神经网络的识别精度的同时,又能减少纯相位相关的计算量和时间开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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