Semantic pooling for complex event detection

Qian Yu, Jingen Liu, Hui Cheng, Ajay Divakaran, H. Sawhney
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引用次数: 8

Abstract

Complex event detection is very challenging in open source such as You-Tube videos, which usually comprise very diverse visual contents involving various object, scene and action concepts. Not all of them, however, are relevant to the event. In other words, a video may contain a lot of "junk" information which is harmful for recognition. Hence, we propose a semantic pooling approach to tackle this issue. Unlike the conventional pooling over the entire video or specific spatial regions of a video, we employ a discriminative approach to acquire abstract semantic "regions" for pooling. For this purpose, we first associate low-level visual words with semantic concepts via their co-occurrence relationship. We then pool the low-level features separately according to their semantic information. The proposed semantic pooling strategy also provides a new mechanism for incorporating semantic concepts for low-level feature based event recognition. We evaluate our approach on TRECVID MED [1] dataset and the results show that semantic pooling consistently improves the performance compared with conventional pooling strategies.
用于复杂事件检测的语义池
复杂事件检测在诸如You-Tube视频等开放源码中是非常具有挑战性的,因为这些视频通常包含非常多样化的视觉内容,涉及各种对象、场景和动作概念。然而,并非所有这些都与事件有关。换句话说,一个视频可能包含很多有害于识别的“垃圾”信息。因此,我们提出了一种语义池方法来解决这个问题。与传统的对整个视频或视频的特定空间区域进行池化不同,我们采用判别方法来获取抽象的语义“区域”进行池化。为此,我们首先通过共现关系将低级视觉词与语义概念联系起来。然后,我们根据低级特征的语义信息,将它们分别汇集在一起。提出的语义池策略还为基于底层特征的事件识别提供了一种整合语义概念的新机制。我们在TRECVID MED[1]数据集上对我们的方法进行了评估,结果表明,与传统的池化策略相比,语义池化始终提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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