Object Recognition and Auto-annotation In News Videos

M. Bastan, Pinar Duygulu
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Abstract

We propose a new approach to object recognition problem motivated by the availability of large annotated image and video collections. Similar to translation from one language to another, this approach considers the object recognition problem as the translation of visual elements to words. The visual elements represented in feature space are first categorized into a finite set of blobs. Then, the correspondences between the blobs and the words are learned using a method adapted from statistical machine translation. Finally, the correspondences, in the form of a probability table, are used to predict words for particular image regions (region naming), for entire images (auto-annotation), or to associate the automatically generated speech transcript text with the correct video frames (video alignment). Experimental results are presented on TRECVID 2004 data set, which consists of about 150 hours of news videos associated with manual annotations and speech transcript text.
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新闻视频中的对象识别和自动注释
我们提出了一种新的方法来解决由大量带注释的图像和视频集合的可用性驱动的对象识别问题。与从一种语言到另一种语言的翻译类似,这种方法将对象识别问题视为将视觉元素翻译为单词。首先将特征空间中表示的视觉元素分类为有限的blob集合。然后,使用统计机器翻译的方法学习blobs和单词之间的对应关系。最后,这些对应关系以概率表的形式用于预测特定图像区域(区域命名)、整个图像(自动注释)的单词,或者将自动生成的语音文本与正确的视频帧(视频对齐)关联起来。在TRECVID 2004数据集上给出了实验结果,该数据集由大约150小时的新闻视频与人工注释和语音transcript文本相关联。
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