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Attire-based photo annotation

机译:基于服装的照片注释

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摘要

Many commercial and free photo organizers allow users to manage their personal photo collections by grouping them into folder, album and by dates. However, these are done manually by dragging and dropping these photos into named albums and star-marked folders. In this paper, we proposed automated photo organization by labeling who are in the images as well as group them into events accordingly. This process is known as automated photo annotation. In most automated photo annotation, basic metadata such as time and date are typically used to group them by events. We took one step further by incorporating the clothing colour feature to perform automated photo annotation. A total of 175 photographs comprising 138 frontal faces are selected from events such as Eid celebration, birthday celebration and outdoor occasions. The face features are described using eigenfaces, while the clothing colours are represented using La*b* colour histogram. Julian date format is added into the feature vector and three metric-distance similarity measures are compared for performance. Our experiment showed that the highest person annotation rate was achieved by combination of face and clothing feature at 82.5 percent. On the other hand, event is best annotated using combination of face and time features.
机译:许多商业和免费的照片组织者允许用户通过将它们分组到文件夹,专辑和日期来管理他们的个人照片集合。但是,这些通过将这些照片拖放到命名的专辑和星标记文件夹中来手动完成。在本文中,我们通过标记在图像中的标签以及相应地将它们分组到事件中提出了自动照片组织。此过程称为自动照片注释。在大多数自动化照片注释中,基本元数据如时间和日期通常用于按事件对它们进行分组。我们通过纳入服装颜色特征来进一步逐步,以执行自动照片注释。共有175张包含138个正面面的照片选自EID庆典,生日庆典和户外场合等事件。使用特征叶片描述面部特征,而使用La * b *颜色直方图表示衣物颜色。朱利安日期格式被添加到特征向量中,并将三个度量距离相似度测量与性能进行比较。我们的实验表明,最高人物注释率是通过面部和服装特征的组合以82.5%的组合实现。另一方面,事件最好使用面部和时间特征的组合来注释。

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