视网膜增强的用于视频分类的词描述符包

Sabin Tiberius Strat, A. Benoît, P. Lambert
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引用次数: 9

摘要

本文研究了视频中不同语义概念的检测问题。在这种情况下,从采样视频关键帧分析中继承而来的视觉词袋(BoW)模型是最流行的方法之一。然而,在图像序列的情况下,该模型面临着新的困难,例如增加的运动信息,额外的计算成本以及内容和概念的可变性增加。考虑到这种时空背景,我们建议在提取BoW描述符之前,通过引入视网膜模型的视频预处理策略来扩展BoW模型。这种预处理增加了局部特征对噪声和光照变化等干扰的鲁棒性。此外,视网膜模型用于检测潜在的显著区域并构建时空描述符。我们实验了三种最先进的局部特征,SIFT, SURF和FREAK,并在TRECVid 2012语义索引(SIN)挑战中评估了我们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retina enhanced bag of words descriptors for video classification
This paper addresses the task of detecting diverse semantic concepts in videos. Within this context, the Bag Of Visual Words (BoW) model, inherited from sampled video keyframes analysis, is among the most popular methods. However, in the case of image sequences, this model faces new difficulties such as the added motion information, the extra computational cost and the increased variability of content and concepts to handle. Considering this spatio-temporal context, we propose to extend the BoW model by introducing video preprocessing strategies with the help of a retina model, before extracting BoW descriptors. This preprocessing increases the robustness of local features to disturbances such as noise and lighting variations. Additionally, the retina model is used to detect potentially salient areas and to construct spatio-temporal descriptors. We experiment with three state of the art local features, SIFT, SURF and FREAK, and we evaluate our results on the TRECVid 2012 Semantic Indexing (SIN) challenge.
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