Recommendation System for Hairstyle Based on Face Recognition Using AI and Machine Learning

Yogesh M. Kamble, Raj B. Kulkarni
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Abstract

Many machine learning algorithms have been introduced to solve different types of problems. Recently, many of these algorithms have been applied to deep architecture models and showed very impressive performances. In general, deep architecture models suffer from the over-fitting problem when there is a small number of training data. In this article the attempt is made to remedy this problem in deep architecture with regularization techniques including overlap pooling and flipped image augmentation and dropout; the authors also compared a deep structure model (convolutional neural network (CNN)) with shallow structure models (support vector machine and artificial neural network with one hidden layer) on a small dataset. It was statistically confirmed that the shallow models achieved better performance than the deep model that did not use a regularization technique. Faces represent complex multidimensional meaningful visual stimuli and developing a computational model for face recognition is difficult. The authors present a hybrid neural-network solution which compares favorably with other methods.
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基于人工智能和机器学习的人脸识别发型推荐系统
为了解决不同类型的问题,人们引入了许多机器学习算法。最近,其中许多算法被应用于深度架构模型,并取得了令人瞩目的成绩。一般来说,当训练数据较少时,深度架构模型会出现过拟合问题。本文尝试利用正则化技术(包括重叠池化和翻转图像增强和剔除)来弥补深度架构中的这一问题;作者还在一个小型数据集上比较了深度结构模型(卷积神经网络(CNN))和浅层结构模型(支持向量机和带一个隐藏层的人工神经网络)。统计结果证实,浅层模型比未使用正则化技术的深层模型取得了更好的性能。人脸代表了复杂的多维有意义的视觉刺激,开发人脸识别的计算模型非常困难。作者提出了一种混合神经网络解决方案,与其他方法相比效果更佳。
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The Internet of Musical Stuff The Study on Software Architecture Smell Refactoring Recommendation System for Hairstyle Based on Face Recognition Using AI and Machine Learning
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