基于压缩特征集的Fisher向量动作和事件识别

Dan Oneaţă, J. Verbeek, C. Schmid
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引用次数: 423

摘要

非受控视频中的动作识别是一个重要而富有挑战性的计算机视觉问题。这一领域的最新进展是由于新的局部特征和模型捕获了局部特征之间的时空结构,或人与物体的相互作用。我们没有致力于更复杂的模型,而是专注于底层特征及其编码。我们评估了Fisher向量作为词袋直方图的替代方法的使用,以结合线性分类器聚合一小组最先进的低级描述符。我们提出了一套庞大而多样的评估,考虑了(i)五个数据集中的短动作分类,(ii)长片电影中这些动作的本地化,以及(iii)复杂事件的大规模识别。我们发现,对于基本的动作识别和定位,MBH特征本身就足以达到最先进的性能。对于复杂事件,我们发现SIFT和MFCC特征提供了互补的线索。在这三个问题上,我们使用更少的特征和更简单的模型,获得了最先进的结果。
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Action and Event Recognition with Fisher Vectors on a Compact Feature Set
Action recognition in uncontrolled video is an important and challenging computer vision problem. Recent progress in this area is due to new local features and models that capture spatio-temporal structure between local features, or human-object interactions. Instead of working towards more complex models, we focus on the low-level features and their encoding. We evaluate the use of Fisher vectors as an alternative to bag-of-word histograms to aggregate a small set of state-of-the-art low-level descriptors, in combination with linear classifiers. We present a large and varied set of evaluations, considering (i) classification of short actions in five datasets, (ii) localization of such actions in feature-length movies, and (iii) large-scale recognition of complex events. We find that for basic action recognition and localization MBH features alone are enough for state-of-the-art performance. For complex events we find that SIFT and MFCC features provide complementary cues. On all three problems we obtain state-of-the-art results, while using fewer features and less complex models.
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