Image Impression Estimation by Clustering People with Similar Tastes

Banri Kojima, Takahiro Komamizu, Yasutomo Kawanishi, Keisuke Doman, I. Ide
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Abstract

This paper proposes a method for estimating impressions from images according to the personal attributes of users so that they can find the desired images based on their tastes. Our previous work, which considered gender and age as personal attributes, showed promising results, but it also showed that users sharing these attributes do not necessarily share similar tastes. Therefore, other attributes should be considered to capture the personal tastes of each user well. However, taking more attributes into account leads to a problem in which insufficient amounts of data are served to classifiers due to the explosion of the number of combinations of attributes. To tackle this problem, we propose an aggregation-based method to condense training data for impression estimation while considering personal attribute information. For evaluation, a dataset of 4,000 carpet images annotated with 24 impression words was prepared. Experimental results showed that the use of combinations of personal attributes improved the accuracy of impression estimation, which indicates the effectiveness of the proposed approach.
基于相似品味聚类的图像印象估计
本文提出了一种根据用户个人属性对图像进行印象估计的方法,使用户能够根据自己的喜好找到自己想要的图像。我们之前的工作,将性别和年龄作为个人属性,显示出令人鼓舞的结果,但它也表明,共享这些属性的用户不一定有相似的品味。因此,应该考虑其他属性来很好地捕捉每个用户的个人品味。然而,考虑到更多的属性会导致一个问题,即由于属性组合的数量激增,提供给分类器的数据量不足。为了解决这个问题,我们提出了一种基于聚合的方法,在考虑个人属性信息的同时压缩训练数据用于印象估计。为了进行评估,准备了一个包含4000张地毯图像的数据集,其中包含24个印象词。实验结果表明,个人属性组合的使用提高了印象估计的准确性,表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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