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Detecting Social Insects in Videos Using Spatiotemporal Regularization

机译:使用时空正则化检测视频中的社交昆虫

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The studies of the network formed by social insects require the motion analysis of their interactions and movements in videos over an extended period of time. Automated detection is an important field of interest because it enables the motion analysis in large-scale experiments. When an automated detection method is applied to various insect types, the training task often involves the collection of a large number of labels provided by human experts. To save the experts' time and effort, unlabeled data have been recently employed to supplement the training. In this paper, we utilize the spatiotemporal connectivity of the unlabeled data to regulate the training of a detector on a new insect type. Our key contribution is integrating the spatiotemporal connectivity among the unlabeled samples to determine the weighting scheme of the existing classifiers from multiple sources. The evaluation on 3 data sets of social insects consisting of 6,000 samples demonstrates that a detector trained using our method can achieve comparable performance to previous approaches while reducing the training labels up to 16 times. Since the proposed method is based on regularizing the unlabeled samples based on their spatiotemporal connectivity, we refer to it as the Spatio-Temporally Regularized Adaptive Learning (STRAL).
机译:对社交昆虫形成的网络的研究需要对它们在较长时间内在视频中的相互作用和运动进行运动分析。自动检测是重要的研究领域,因为它可以进行大规模实验中的运动分析。当自动检测方法应用于各种昆虫类型时,训练任务通常涉及人类专家提供的大量标签的收集。为了节省专家的时间和精力,最近使用了无标签数据来补充培训。在本文中,我们利用未标记数据的时空连通性来调节对新型昆虫的探测器的训练。我们的主要贡献是整合了未标记样本之间的时空连通性,以确定来自多个来源的现有分类器的加权方案。对由6,000个样本组成的3种社交昆虫数据集的评估表明,使用我们的方法训练的检测器可以实现与以前的方法相当的性能,同时将训练标签减少多达16倍。由于所提出的方法基于基于未标记样本的时空连通性进行正则化,因此我们将其称为时空正则化自适应学习(STRAL)。

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