人类面部表情分类与Xception建筑学模型对神经对联性网络的深层研究

Purnawarman Musa, Wahid Khairul Anam, Saiful Bahri Musa, Witari Aryunani, Remi Senjaya, Puji Sularsih
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引用次数: 0

摘要

深度学习是一个神经网络,它创造创新,为计算机植入解决问题的专业知识。计算机视觉的原理之一是具有视觉框架的检测系统,该系统可以以与人类视觉系统相同的方式识别遇到的事物。利用基于人工智能的卷积神经网络(CNN)模型和深度学习技术,提出了一个人脸情绪识别系统。面部表情的分类将被用作使用CNN训练的人脸识别系统的基础。这些应用程序打算使用OpenCV、Keras和TensorFlow库作为后端。我们讨论了异常架构模型在面部表情识别系统中的最佳应用研究。基于这些测试的结果,该研究在使用FER-2013数据集训练面部表情的异常架构模型的训练和数据测试中获得了更高的准确率值,准确率值为66%,准确率(76%)、召回率(65%)和F1分数(63%)的平均值也达到了66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pembelajaran Mendalam Pengklasifikasi Ekspresi Wajah Manusia dengan Model Arsitektur Xception pada Metode Convolutional Neural Network
Deep learning is a neural network that creates innovations that give computer-implanted problem-solving expertise. One of the principles of computer vision is a detection system with a vision framework that can identify things encountered in the same manner as a human vision system. Using an artificial intelligence-based Convolutional Neural Network (CNN) model with deep learning techniques, we present a face emotion identification system. The categorization of facial expressions will be utilized as the basis for a face recognition system trained using CNN. The applications are intended to use the OpenCV, Keras, and TensorFlow libraries as the backend. We were discussing the study on the best use of xception architectural models in facial expression recognition systems. Based on the results of these tests, the study obtained an increased accuracy value in training and data testing on an xception architecture model trained for facial expressions using the FER-2013 dataset, resulting in an accuracy value of 66% as well as the value of each average for precision (76%), recall (65%), and F1 score (63%).
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