增强训练数据集对人脸识别系统中卷积神经网络性能的影响

Mehmet Ali Kutlugun, Yahya Sirin, Mehmet Ali Karakaya
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引用次数: 9

摘要

如今,随着处理能力的提高和图形处理器的发展,深度学习方法已被应用于大数据分析、语音和图像处理等许多领域。特别是人脸识别系统已成为生物计量学研究的重要课题之一。光线方向、反射、面部表情的情绪和身体变化是人脸识别系统中使识别困难的主要因素。使用小数据集中的可用数据对系统进行训练是影响性能的一个重要因素。卷积神经网络(CNN)模型是一种用于大量训练数据的深度学习架构。在本研究中,通过应用不同的过滤器,增加了一家小型公司的少量员工图像集。此外,还试图确定哪些数据增强选项对人脸识别更有效。因此,非实时人脸识别是通过使用具有许多特征的每张图片的新增强数据集进行训练来实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effects of Augmented Training Dataset on Performance of Convolutional Neural Networks in Face Recognition System
Nowadays, deep learning methods have been used in many areas such as big data analysis, speech and image processing with the increasing processing power and the development of graphics processors. In particular, face recognition systems have become one of the most important research topics in biometry. Light direction, reflection, emotional and physical changes in facial expression are the main factors in face recognition systems that make recognition difficult. Training of the system with the available data in small data sets is an important factor that negatively affects the performance. The Convolutional Neural Network (CNN) model is a deep learning architecture used for large amounts of training data. In this study, a small number of employee images set of a small-scale company has been increased by applying different filters. In addition, it has been tried to determine which data augmentation options have more effect on face recognition. Thus, non-real-time face recognition has been performed by training with new augmented dataset of each picture with many features.
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