基于AlexNet卷积神经网络的体内皮肤电容性图像分类

Xu Zhang, W. Pan, P. Xiao
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引用次数: 10

摘要

皮肤电容成像技术是近年来发展起来的一种用于皮肤水化和皮肤溶剂渗透测量的新技术。本研究使用AlexNet模型评估深度学习在体内皮肤电容性图像分析中的性能。利用预训练模型对图像分类器进行训练,针对皮肤的水合程度、皮肤损伤程度等特征进行特定的特征提取、预测和分类。在这项研究中使用了超过1000张皮肤电容图像。研究的目标是:使用预训练模型AlexNet实现特征提取;模型精度评估;并进一步完善了系统的多特征分类。该图像分类程序显示出较好的分类效果,准确率在0.98以上,与皮肤含水量、皮肤损伤程度、志愿者性别的实验结果进行了比较,测试图像的分类是正确的。
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In-Vivo Skin Capacitive Image Classification Using AlexNet Convolution Neural Network
Skin capacitive imaging is a novel technique which has been developed for skin hydration and skin solvent penetration measurements. This research is to assess the performance of deep learning in in-vivo skin capacitive image analysis using AlexNet model. The image classifier has been trained by using pretrained model to implement the specific feature extraction, prediction and classification specifically for the skin characteristics such as hydration level, skin damage level etc. There are over 1000 skin capacitive images used in this study. The objectives of the research are: feature extraction implementation using the pretrained model AlexNet; accuracy assessment of the model; and further improve the system for multiple features classification. The image classification programme shows a good result which has accuracy over 0.98, and the test images were classified correctly comparing with the experimental results of skin hydration, skin damaged level and the gender of the volunteers.
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