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Multi balanced trees for face retrieval from image database

机译:多平衡树从图像数据库中检索人脸

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We are interested here in retrieving images containing a specific person in image database. Due to large variations in illumination conditions, hairstyles, facial expressions, etc. and the factors like occlusion, sunglasses, profile, etc., robust face matching has been a challenging problem. On the other hand, the speed of search is also a considerable issue, especially for the dataset with millions of face images. Inspired by face tracks in video retrieval which take advantages from the abundance of frames to get multiple exemplars, we present an approach named multi balanced trees for face retrieval from image dataset in this paper. Face images in the dataset are efficiently organized by the trees produced for persons. Multi sampling on the facial components employs the rich local information, which can help to differentiate different persons. Given a query face, a sorted face set with similarities is obtained by inserting the query into a tree. It is easy and fast to get the search results in respect that it avoids calculating the distances between query and elements in the cluster. In addition, a rectification strategy is given in the query process to rectify the error occurred in the generation of trees, resulting in a significant improvement of retrieval quality. Experimental results show the better face grouping ability in comparison with traditional methods. The speed of searching is improved as well.
机译:我们对检索图像数据库中包含特定人物的图像感兴趣。由于照明条件,发型,面部表情等以及诸如遮挡,太阳镜,轮廓等因素的较大差异,鲁棒的面部匹配一直是一个具有挑战性的问题。另一方面,搜索速度也是一个相当大的问题,特别是对于具有数百万张脸部图像的数据集而言。受视频检索中人脸轨迹的启发,该方法利用了丰富的帧来获得多个样本,本文提出了一种称为多平衡树的方法,用于从图像数据集中检索人脸。数据集中的人脸图像是由为人生产的树木有效组织的。对面部组件进行多次采样会利用丰富的本地信息,这有助于区分不同的人。给定查询面孔,可以通过将查询插入树中来获得具有相似性的排序面孔集。考虑到它避免了计算查询和集群中元素之间的距离,因此轻松而快速地获得搜索结果。另外,在查询过程中提供了一种纠正策略,以纠正在生成树中出现的错误,从而显着提高了检索质量。实验结果表明,与传统方法相比,人脸分组能力更好。搜索速度也得到改善。

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