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A Rank Aggregation Framework for Video Interestingness Prediction

机译:视频兴趣度预测的排名汇总框架

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Often, different segments of a video may be more or less attractive for people depending on their experience in watching it. Due to this subjectiveness, the challenging task of automatically predicting whether a video segment is interesting or not has attracted a lot of attention. Current solutions are usually based on learning models trained with features from different modalities. In this paper, we propose a late fusion with rank aggregation methods for combining ranking models learned with features of different modalities and by different learning-to-rank algorithms. The experimental evaluation was conducted on a benchmarking dataset provided for the Predicting Media Interestingness Task at the MediaEval 2016. Two different modalities and four learning-to-rank algorithms are considered. The results are promising and show that the rank aggregation methods can be used to improve the overall performance, reaching gains of more than 10% over state-of-the-art solutions.
机译:通常,视频的不同片段对人们的吸引力或多或少取决于人们观看视频的经验。由于这种主观性,自动预测视频片段是否有趣的艰巨任务吸引了很多关注。当前的解决方案通常基于以来自不同模式的特征训练的学习模型。在本文中,我们提出了一种与秩聚合方法的后期融合方法,用于将学习到的具有不同模态特征和不同学习算法的排序模型进行组合。实验评估是在MediaEval 2016上为预测媒体兴趣度任务提供的基准数据集上进行的。考虑了两种不同的模式和四种学习排名算法。结果令人鼓舞,表明等级聚合方法可用于改善整体性能,与最先进的解决方案相比,可获得超过10%的收益。

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