Comparison of Canny and Centroid on Face Recognition Process using Gray Level Cooccurrence Matrix and Probabilistic Neural Network

Toni Wijanarko Adi Putra, Joko Minardi, A. F. O. Gaffar, B. Suprapty, R. Malani, Supriadi
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Abstract

Face recognition system is the development of basic methods of authentication systems by using the natural characteristics of the human face as a basis. The process of recognizing the facial image through several stages of the training phase and testing phase. This study has used datasets in the form of facial image samples obtained with various light intensities, distances, and positions toward the acquisition devices. This study has implemented the Centroid method and Canny edge detection to get image patterns from preprocessed image samples. Image features were obtained from image patterns using Gray Level Co-occurrence Matrix (GLCM). PNN has used as a classification of image patterns. The results of this study showed that the combination of the Centroid and GLCM methods (accuracy of 93.33%) is better than the combination of Canny edge detection and the GLCM method (accuracy of 66.43%). The results of this study also showed that the farther the spatial distance to build the GLCM features, the lower the accuracy.
灰度共生矩阵与概率神经网络人脸识别中Canny与质心的比较
人脸识别系统是利用人脸的自然特征为基础开发的认证系统的基本方法。人脸图像的识别过程要经过训练阶段和测试阶段几个阶段。本研究使用的数据集是在不同的光强、距离和朝向采集设备的位置下获得的面部图像样本。本研究采用质心法和Canny边缘检测从预处理后的图像样本中提取图像模式。利用灰度共生矩阵(GLCM)从图像模式中获取图像特征。PNN已被用作图像模式的分类。本研究结果表明,质心与GLCM方法的结合(准确率为93.33%)优于Canny边缘检测与GLCM方法的结合(准确率为66.43%)。研究结果还表明,构建GLCM特征的空间距离越远,精度越低。
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