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Accurate Fashion Style Estimation with a Novel Training Set and Removal of Unnecessary Pixels

机译:通过新颖的训练集和不必要像素的去除来准确评估时尚风格

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To improve the accuracy of fashion style estimation, this paper proposes a novel large-scale dataset named WEARStyle and two types of novel schemes that remove unnecessary pixels: SSD-based human detection and PSPNet-based pixel selection. The classification accuracy of the Hipster Wars dataset is improved to 78.8% by an SVM-based classifier when the WEARStyle dataset is used to train a ResNet50-based feature extractor. The accuracy is improved to 80.0% and 80.9%, when the SSD-based human detection and PSPNet-based pixel selection are applied, respectively. The achieved accuracy outperforms those of other existing schemes.
机译:为了提高时尚风格估计的准确性,本文提出了一个名为WEARStyle的新型大规模数据集,以及两种类型的去除不必要像素的新颖方案:基于SSD的人体检测和基于PSPNet的像素选择。当使用WEARStyle数据集训练基于ResNet50的特征提取器时,基于SVM的分类器将Hipster Wars数据集的分类精度提高到78.8%。当应用基于SSD的人体检测和基于PSPNet的像素选择时,精度分别提高到80.0%和80.9%。所达到的精度优于其他现有方案。

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