Bidirectional ranking for person re-identification

ICME(2013)

引用 22|浏览35
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摘要
This paper proposes a simple but efficient bidirectional ranking method to improve person re-identification results across non-overlapping cameras. Previous methods treat person reidentification as a special object retrieval problem, and compute the final rank result purely based on a unidirectional matching between the probe and all gallery images. However, the expected person image may be excluded from the probe's ??-nearest neighbor due to appearance changes caused by variations in illuminations, poses, viewpoints and occlusion. To solve the above problem, our method queries every gallery image in a new gallery composed of the original probe image and other gallery images, and revises the initial query result in accordance with both content and context similarities between bidirectional ranking lists. A latent assumption of our method is that images of the same person should not only have similar visual content, known as content similarity, but also possess similar k-nearest neighbors, known as context similarity. Extensive experiments conducted on a series of standard data sets have validated the effectiveness of our proposed method with an average improvement of 5-10% over original baseline methods.
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关键词
k-nearest neighbors,content similarities,image recognition,gallery image querying,person re-identification,image retrieval,content and context similarities,context similarities,bidirectional ranking,context similarity,latent assumption,re-ranking,content similarity,person reidentification,bidirectional ranking lists,nonoverlapping cameras,visualization,k nearest neighbors
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