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Key-text spotting in documentary videos using Adaboost

机译:使用Adaboost在纪录片影片中发现关键文字

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摘要

This paper presents a method for spotting key-text in videos, based on a cascade of classifiers trained with Adaboost. The video is first reduced to a set of key-frames. Each key-frame is then analyzed for its text content. Text spotting is performed by scanning the image with a variable-size window (to account for scale) within which simple features (mean/variance of grayscale values and x/y derivatives) are extracted in various sub-areas. Training builds classifiers using the most discriminant spatial combinations of features for text detection. The text-spotting module outputs a decision map of the size of the input key-frame showing regions of interest that may contain text suitable for recognition by an OCR system. Performance is measured against a dataset of 147 key-frames extracted from 22 documentary films of the National Film Board (NFB) of Canada. A detection rate of 97% is obtained with relatively few false alarms.
机译:本文提出了一种基于Adaboost训练的分类器级联的视频关键文本识别方法。首先将视频缩小为一组关键帧。然后分析每个关键帧的文本内容。通过使用可变大小的窗口(以考虑比例)扫描图像来执行文本点检,在该窗口中,在各个子区域中提取了简单的特征(灰度值的均值/方差和x / y导数)。训练使用最有区别的特征空间组合来构建分类器,以进行文本检测。文本提取模块输出输入关键帧的大小的决策图,该决策图显示感兴趣的区域,其中可能包含适合于OCR系统识别的文本。表演是根据从加拿大国家电影局(NFB)的22部纪录片中提取的147个关键帧的数据集进行衡量的。虚假警报相对较少,检出率为97%。

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