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Uncertainty Sampling for Action Recognition via Maximizing Expected Average Precision

机译:通过最大化预期平均精度的行动识别不确定性取样

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Recognizing human actions in video clips has been an important topic in computer vision. Sufficient labeled data is one of the prerequisites for the good performance of action recognition algorithms. However, while abundant videos can be collected from the Internet, categorizing each video clip is time-consuming. Active learning is one way to alleviate the labeling labor by allowing the classifier to choose the most informative unlabeled instances for manual annotation. Among various active learning algorithms, uncertainty sampling is arguably the most widely-used strategy. Conventional uncertainty sampling strategies such as entropy-based methods are usually tested under accuracy. However, in action recognition Average Precision (AP) is an acknowledged evaluation metric, which is somehow ignored in the active learning community. It is defined as the area under the precision-recall curve. In this paper, we propose a novel uncertainty sampling algorithm for action recognition using expected AP. We conduct experiments on three real-world action recognition datasets and show that our algorithm outperforms other uncertainty-based active learning algorithms.
机译:识别视频剪辑中的人类行为一直是计算机愿景中的一个重要主题。足够的标记数据是动作识别算法良好性能的先决条件之一。但是,虽然可以从互联网收集丰富的视频,但分类每个视频剪辑是耗时的。主动学习是一种通过允许分类器选择用于手动注释的最具信息性的未标记实例来减轻标签劳动的一种方法。在各种主动学习算法中,不确定性采样可以说是最广泛使用的策略。通常在准确性测试基于熵的方法等传统的不确定性采样策略。然而,在行动识别平均精度(AP)是一个确认的评估度量,这在活动学习界中被忽略了。它被定义为精密召回曲线下的区域。在本文中,我们提出了一种使用预期AP的动作识别的新颖性不确定性采样算法。我们在三个真实行动识别数据集中进行实验,并表明我们的算法优于其他基于不确定性的主动学习算法。

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