电视新闻故事检测与分类的概率框架

F. Colace, P. Foggia, G. Percannella
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引用次数: 23

摘要

在本文中,我们面临的问题是将新闻视频划分为故事,并根据预定义的类别集对其进行分类。特别地,我们建议在分割和分类阶段分别采用基于隐马尔可夫模型和贝叶斯网络范式的多级概率框架。整个分析是利用叠加文本识别、说话人识别、语音转录、锚点检测等技术从视频和音轨中提取信息进行的。该系统在意大利新闻视频数据库上进行了测试,结果非常有希望
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A Probabilistic Framework for TV-News Stories Detection and Classification
In this paper we face the problem of partitioning the news videos into stories, and of their classification according to a predefined set of categories. In particular, we propose to employ a multi-level probabilistic framework based on the hidden Markov models and the Bayesian networks paradigms for the segmentation and the classification phases, respectively. The whole analysis is carried out exploiting information extracted from the video and the audio tracks using techniques of superimposed text recognition, speaker identification, speech transcription, anchor detection. The system was tested on a database of Italian news videos and the results are very promising
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