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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Latent Bi-Constraint SVM for Video-Based Object Recognition
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Latent Bi-Constraint SVM for Video-Based Object Recognition

机译:潜在的双约束SVM用于基于视频的目标识别

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摘要

We address the task of recognizing objects from video input. This important problem is relatively unexplored, compared with image-based object recognition. To this end, we make the following contributions. First, we introduce two comprehensive data sets for video-based object recognition. Second, we propose latent bi-constraint SVM (LBSVM), a maximum-margin framework for video-based object recognition. LBSVM is based on structured-output SVM, but extends it to handle noisy video data and ensure consistency of the output decision throughout time. We apply LBSVM to recognize office objects and museum sculptures, and we demonstrate its benefits over image-based, set-based, and other video-based object recognition.
机译:我们解决了从视频输入中识别对象的任务。与基于图像的对象识别相比,这个重要问题尚未得到开发。为此,我们做出以下贡献。首先,我们介绍了两个用于基于视频的目标识别的综合数据集。其次,我们提出潜在的双约束SVM(LBSVM),这是用于基于视频的对象识别的最大保证金框架。 LBSVM基于结构化输出SVM,但将其扩展以处理嘈杂的视频数据,并确保整个时间段内输出决策的一致性。我们将LBSVM应用于识别办公对象和博物馆雕塑,并证明了其优于基于图像,基于集合和其他基于视频的对象识别的优势。

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