Learning Temporal Alignment Uncertainty for Efficient Event Detection

Iman Abbasnejad, S. Sridharan, S. Denman, C. Fookes, S. Lucey
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引用次数: 4

Abstract

In this paper we tackle the problem of efficient video event detection. We argue that linear detection functions should be preferred in this regard due to their scalability and efficiency during estimation and evaluation. A popular approach in this regard is to represent a sequence using a bag of words (BOW) representation due to its: (i) fixed dimensionality irrespective of the sequence length, and (ii) its ability to compactly model the statistics in the sequence. A drawback to the BOW representation, however, is the intrinsic destruction of the temporal ordering information. In this paper we propose a new representation that leverages the uncertainty in relative temporal alignments between pairs of sequences while not destroying temporal ordering. Our representation, like BOW, is of a fixed dimensionality making it easily integrated with a linear detection function. Extensive experiments on CK+, 6DMG, and UvA-NEMO databases show significant performance improvements across both isolated and continuous event detection tasks.
学习时间对齐不确定性的有效事件检测
本文主要研究视频事件的高效检测问题。我们认为,在这方面,线性检测函数应该首选,因为它们在估计和评估过程中的可扩展性和效率。在这方面,一种流行的方法是使用单词袋(BOW)表示法表示序列,因为它:(i)与序列长度无关的固定维数,以及(ii)它能够紧凑地对序列中的统计数据建模。然而,BOW表示的一个缺点是对时间排序信息的内在破坏。在本文中,我们提出了一种新的表示,它利用了序列对之间相对时间比对的不确定性,同时又不破坏时间顺序。我们的表示,像BOW一样,是一个固定的维度,使它很容易与线性检测函数集成。在CK+、6DMG和UvA-NEMO数据库上进行的大量实验表明,无论是孤立事件检测任务还是连续事件检测任务,性能都有显著提高。
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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