Facial skin image classification system using Convolutional Neural Networks deep learning algorithm

Chiun-Li Chin, Ming-Chieh Chin, Ting-Yu Tsai, Wei-En Chen
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引用次数: 6

Abstract

The global consumption trend of facial skin care products market is gradually changing. With the concept of preventing aging from becoming more common, the age level of using facial skin care products is gradually reduced, so that the demand of young consumer groups gradually increases. This paper used a deep learning algorithm based on the combination of a smart phone and facial skin detection to develop a facial skin image classification system using Convolutional Neural Networks (CNN) deep learning algorithm. In this system, it can recognize three classes facial skin problem, good facial skin quality, bad facial skin quality and face makeup, which helps people quickly understand their facial skin problem. We proposed two different CNN architectures. One has two convolutional layers, two pooling layers and three fully connected layer and the other has three convolution layers, three pooling layers, and four fully connected layer. Finally, we compare the result of our proposed architecture with LeNet-5. From the experimental result, we understand that the architecture which has three convolution layers, three pooling layers, and four fully connected layer, has the highest recognition rate, and we use it as a baseline to build a framework for detecting facial skin problems.
人脸皮肤图像分类系统采用卷积神经网络深度学习算法
全球面部护肤品市场的消费趋势正在逐渐发生变化。随着防衰老理念的日益普及,使用面部护肤品的年龄层次逐渐降低,使得年轻消费群体的需求逐渐增加。本文采用基于智能手机与面部皮肤检测相结合的深度学习算法,利用卷积神经网络(CNN)深度学习算法开发了一个面部皮肤图像分类系统。该系统可以识别面部皮肤质量好、面部皮肤质量差和面部化妆三种类型的皮肤问题,帮助人们快速了解自己的面部皮肤问题。我们提出了两种不同的CNN架构。一个有两个卷积层,两个池化层和三个全连接层,另一个有三个卷积层,三个池化层和四个全连接层。最后,我们将我们提出的架构与LeNet-5的结果进行了比较。从实验结果中,我们了解到具有3个卷积层、3个池化层和4个全连接层的架构具有最高的识别率,并以此为基准构建了面部皮肤问题检测的框架。
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