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Face Recognition System using Histograms of Oriented Gradients and Convolutional Neural Network based on with Particle Swarm Optimization

机译:基于粒子群优化的面向梯度和卷积神经网络直方图的人脸识别系统

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In this paper, Histograms of Oriented Gradients dependent on the strong point of convolutional neural organization which is new methodology for evenness face data set, is introduced. A proposed face acknowledgment framework was created to be utilized for various purposes. We utilized Gabor wavelet change for include extraction of evenness face preparing information and afterward we utilized profound learning technique for acknowledgment. We executed and assessed the proposed strategy on ORL and YALE data sets with Matlab 2020b. Besides, similar trials were directed applying Particle Swarm Optimization (PSO) for include determination approach. The execution of Gabor wavelet include extraction with a high number of preparing picture tests has end up being more viable than different strategies in our examination. The acknowledgment rate while carrying out the PSO strategies on ORL data set is 86.62% while it is 92.6% with the three techniques on YALE data set. In any case, the utilization of PSO calculation has expanded the exactness rate to 95.88% for ORL information base and 95.23% on YALE data set.
机译:在本文中,引入了取决于卷大神经组织的强点的导向梯度的直方图,这是均匀的均匀性面部数据集的新方法。创建建议的面部确认框架以用于各种目的。我们利用Gabor小波变化包括提取均匀性面临的提取信息,然后我们利用了深刻的学习技术来确认。我们在Matlab 2020B中执行并评估了对ORL和Yale数据集的提议策略。此外,类似的试验是针对包括确定方法的粒子群优化(PSO)的应用。 Gabor小波的执行包括大量准备图像测试的提取最终比我们检查中的不同策略更加可行。在ORL数据集上执行PSO策略的确认速率为86.62%,而耶鲁数据集的三种技术则为92.6%。在任何情况下,PSO计算的利用率都将精确度扩展到95.88%的ORL信息库和耶鲁数据集95.23%。

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