Localized Content-Based Image Retrieval Using Semi-Supervised Multiple Instance Learning
نویسندگان
چکیده
In this paper, we propose a Semi-Supervised MultipleInstance Learning (SSMIL) algorithm, and apply it to Localized ContentBased Image Retrieval(LCBIR), where the goal is to rank all the images in the database, according to the object that users want to retrieve. SSMIL treats LCBIR as a Semi-Supervised Problem and utilize the unlabeled pictures to help improve the retrieval performance. The comparison result of SSMIL with several state-of-art algorithms is promising.
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