Dynamic Pooling for Complex Event Recognition

Wei-Xin Li, Qian Yu, Ajay Divakaran, N. Vasconcelos
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引用次数: 50

Abstract

The problem of adaptively selecting pooling regions for the classification of complex video events is considered. Complex events are defined as events composed of several characteristic behaviors, whose temporal configuration can change from sequence to sequence. A dynamic pooling operator is defined so as to enable a unified solution to the problems of event specific video segmentation, temporal structure modeling, and event detection. Video is decomposed into segments, and the segments most informative for detecting a given event are identified, so as to dynamically determine the pooling operator most suited for each sequence. This dynamic pooling is implemented by treating the locations of characteristic segments as hidden information, which is inferred, on a sequence-by-sequence basis, via a large-margin classification rule with latent variables. Although the feasible set of segment selections is combinatorial, it is shown that a globally optimal solution to the inference problem can be obtained efficiently, through the solution of a series of linear programs. Besides the coarse-level location of segments, a finer model of video structure is implemented by jointly pooling features of segment-tuples. Experimental evaluation demonstrates that the resulting event detector has state-of-the-art performance on challenging video datasets.
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复杂事件识别的动态池
研究了复杂视频事件分类中池化区域的自适应选择问题。复杂事件被定义为由多个特征行为组成的事件,这些特征行为的时间结构可以随序列而变化。为了统一解决特定事件的视频分割、时间结构建模和事件检测等问题,定义了动态池算子。将视频分解为片段,识别出对检测给定事件信息量最大的片段,从而动态确定最适合每个序列的池化算子。这种动态池化是通过将特征片段的位置作为隐藏信息来实现的,这些隐藏信息是通过带有潜在变量的大边界分类规则逐序列推断出来的。尽管段选择可行集是组合的,但通过求解一系列线性规划,可以有效地得到推理问题的全局最优解。除了粗层次的片段定位外,还通过片段元组特征的联合池化实现了更精细的视频结构模型。实验评估表明,所得到的事件检测器在具有挑战性的视频数据集上具有最先进的性能。
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