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A hybrid approach to building face shape classifier for hairstyle recommender system

机译:用于发型推荐系统的构建脸部形状分类器的混合方法

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Identifying human face shape is the first and the most vital process prior to choosing the right hairstyle to wear on according to guidelines from hairstyle experts, especially for women. This work presents a novel framework for a hairstyle recommender system that is based on face shape classifier. This framework enables an automatic hairstyle recommendation with a single face image. This has a direct impact on beauty industry service providers. It can simulate how the user looks like when she is wearing the chosen hairstyle recommended by the expert system. The model used in this framework is based on Support Vector Machine. The framework is evaluated on hand-crafted, deep-learned (VGG-face) features and VGG-face fine-tuned version for the face shape classification task. In addition to evaluating these individual features by a well-designed framework, we attempted to fuse these three descriptors together in order to improve the performance of the classification task. Two combination techniques were employed, namely: Vector Concatenation and Multiple Kernel Learning (MKL) techniques. All the hyper-parameters of the model were optimised by using Particle Swarm Optimisation. The results show that combining hand-crafted and VGG-face descriptors with MKL yielded the best results at 70.3% of accuracy which was statistically significantly better than using individual features. Thus, combining multiple representations of the data with MKL can improve the overall performance of the expert system. In addition, this proves that hand-crafted descriptor can be complementary to deep-learned descriptor. (C) 2018 Elsevier Ltd. All rights reserved.
机译:根据发型专家(特别是女性)的指导方针,选择正确的发型之前,识别人脸形状是最重要的过程。这项工作提出了一种基于面部形状分类器的发型推荐系统的新颖框架。该框架启用了具有单个面部图像的自动发型推荐。这直接影响到美容行业服务提供商。它可以模拟用户穿着专家系统推荐的所选发型时的外观。该框架中使用的模型基于支持向量机。该框架在手工制作的,深度学习的(VGG-face)功能和VGG-face精调版本上进行了评估,用于面部形状分类任务。除了通过精心设计的框架评估这些单独的功能外,我们还尝试将这三个描述符融合在一起,以提高分类任务的性能。采用了两种组合技术,即:向量级联和多核学习(MKL)技术。通过使用粒子群优化对模型的所有超参数进行了优化。结果表明,将手工制作的VGG面部描述符与MKL结合使用可获得最佳结果,准确度为70.3%,在统计学上明显优于使用单个特征。因此,将数据的多种表示与MKL结合使用可以提高专家系统的整体性能。另外,这证明了手工制作的描述符可以与深度学习的描述符互补。 (C)2018 Elsevier Ltd.保留所有权利。

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