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Coached Active Learning for Interactive Video Search

机译:互动视频搜索的执教主动学习

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Active learning with uncertainty sampling has been popularly employed in implementing interactive video search, due to its promise to reduce labeling efforts. However, since the ultimate goal of interactive search is to find as many relevant shots as possible, the purely explorative learning strategy always places conventional active learning in a dilemma whether to explore uncertain areas for a better understanding of query distribution or to harvest in certain areas for more relevant instances. In this paper, we propose a novel paradigm of active learning, where a coaching process is introduced to guide the leaner by jointly consulting an estimated prior query distribution and a posterior query distribution indicated by current classifier outcomes. To bypass the difficulty of estimating the prior query distribution from a limited number of labeled relevant instances, we propose to estimate the distribution using a set of semantic distributions which are statistically from the same distributions as the labeled relevant instances. With the coaching of both prior and posterior query distributions, the learning can be conducted and scheduled with a global perspective, and thus can explicitly balance the trade-off between exploitation and exploration. The results of the experiments on TRECVID 2005-2009 datasets validate the efficiency and effectiveness of our approach, which outperforms the conventional active learning methods with uncertainty sampling and also shows superiority to several state-of-the art interactive video search systems.
机译:由于其承诺减少标签努力,有不确定性抽样的积极学习在实施互动视频搜索方面受到了广泛的用途。然而,由于互动搜索的最终目标是寻找尽可能多的相关镜头,纯粹的探索性学习策略总是以困境为难以置信的难以探索不确定的区域以更好地理解查询分布或在某些区域收获的情况下达到困境。有关更多相关实例。在本文中,我们提出了一种积极学习的新颖范式,其中引入了教练过程,以引导瘦员通过联合咨询估计的先前查询分布和由当前分类器结果指示的后查询分布。绕过难以从有限数量的标记相关实例估算先前查询分发的难度,我们建议使用一组语义分布来估计分布,该语义分布在统计上与标记相关的实例相同的分布。随着先前和后后查询分布的辅导,可以通过全球视角来进行和安排学习,因此可以明确地平衡剥削和探索之间的权衡。 TRECVID 2005-2009数据集的实验结果验证了我们方法的效率和有效性,这优于具有不确定性采样的传统主动学习方法,并且还示出了几种最先进的交互式视频搜索系统的优越性。

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