发明名称 LEARNING MULTIMEDIA SEMANTICS FROM LARGE-SCALE UNSTRUCTURED DATA
摘要 Systems and methods for learning topic models from unstructured data and applying the learned topic models to recognize semantics for new data items are described herein. In at least one embodiment, a corpus of multimedia data items associated with a set of labels may be processed to generate a refined corpus of multimedia data items associated with the set of labels. Such processing may include arranging the multimedia data items in clusters based on similarities of extracted multimedia features and generating intra-cluster and inter-cluster features. The intra-cluster and the inter-cluster features may be used for removing multimedia data items from the corpus to generate the refined corpus. The refined corpus may be used for training topic models for identifying labels. The resulting models may be stored and subsequently used for identifying semantics of a multimedia data item input by a user.
申请公布号 WO2015167942(A1) 申请公布日期 2015.11.05
申请号 WO2015US27408 申请日期 2015.04.24
申请人 MICROSOFT TECHNOLOGY LICENSING, LLC 发明人 HUA, XIAN-SHENG;LI, JIN;USHIKU, YOSHITAKA
分类号 G06N99/00 主分类号 G06N99/00
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