用于自动视频注释的增强半监督学习

Meng Wang, Xiansheng Hua, Lirong Dai, Yan Song
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引用次数: 11

摘要

对于大规模视频数据库的自动语义标注,标记训练样本的不足是一个主要障碍。一般的半监督学习算法可以帮助解决这个问题,但改进是有限的。本文通过探索视频序列中语义概念的时间一致性,对自训练和协同训练两种半监督学习算法进行了改进。在增强算法中,以时间约束的投篮聚类代替单个投篮作为基本样本单位,可以在重新训练之前纠正大多数错误分类,从而获得更准确的统计模型。实验表明,增强的自训练/协同训练显著提高了视频标注的性能
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Enhanced Semi-Supervised Learning for Automatic Video Annotation
For automatic semantic annotation of large-scale video database, the insufficiency of labeled training samples is a major obstacle. General semi-supervised learning algorithms can help solve the problem but the improvement is limited. In this paper, two semi-supervised learning algorithms, self-training and co-training, are enhanced by exploring the temporal consistency of semantic concepts in video sequences. In the enhanced algorithms, instead of individual shots, time-constraint shot clusters are taken as the basic sample units, in which most mis-classifications can be corrected before they are applied for re-training, thus more accurate statistical models can be obtained. Experiments show that enhanced self-training/co-training significantly improves the performance of video annotation
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