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A relevance feedback approach to video genre retrieval

机译:视频类型检索的相关反馈方法

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Content-based retrieval in video databases has become an important task with the availability of large quantities of data in both public and proprietary archives. Most of video systems are based on feature classification, but problems appear because of “semantic gap” between high-level human concepts and the machine-readable low-level visual features. In this paper we adopt a relevance feedback approach (RF) to bridge the semantic gap by progressively collecting feedback from the user, which allows the machine to discover the semantic meanings of objects or events. Experimental tests conducted on more than 91 hours of video footage show an improvement of up to 90% in retrieval accuracy, compared to classic classification-based retrieval.
机译:基于内容的视频数据库检索已成为公共和专有档案中的大量数据的重要任务。大多数视频系统都基于特征分类,但由于高级人类概念与机器可读低级视觉功能之间的“语义差距”,因此出现了问题。在本文中,我们采用相关反馈方法(RF)来通过逐步收集来自用户的反馈来桥接语义差距,这允许机器发现对象或事件的语义含义。与经典的基于分类的检索相比,超过91小时的视频镜头进行的实验测试显示出可检索精度的提高至多90%。

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