Marlinda Vasty Overbeek
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引用次数: 1

摘要

本研究的重点是利用定向梯度直方图算法对人脸表情进行检测。而分类算法则采用卷积神经网络。图像数据以人类七种不同表情的形式使用,提取48x48像素。利用梯度方向直方图作为特征提取算法,因为梯度方向直方图可以很好地用于运动物体的检测。而使用卷积神经网络是因为它是多层感知器算法的改进。在完成的三个时代中,它产生了77%的最佳准确率来重新引入人类面部表情。这些结果很有说服力,因为它只使用了三个epoch。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HISTOGRAM OF ORIENTED GRADIENT UNTUK DETEKSI EKSPRESI WAJAH MANUSIA
This research focuses on the detection of human facial expressions using the Histogram of Oriented Gradient algorithm. Whereas for the classification algorithm, Convolutional Neural Network is used. Image data used in the form of seven different expressions of humans with the extraction of 48x48 pixels. The use of Histogram of Oriented Gradient as a feature extracting algorithm, because Histogram of Oriented Gradient is good to be used in detecting moving objects. Whereas Convolutional Neural Network is used because it is an improvement of the Multi Layer Perceptron algorithm. Of the three epoches done, it produced the best accuracy of 77% re-introduction of human facial expressions. These results are quite convincing because it only uses three epochs.
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