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A discriminative learning framework with pairwise constraints for video object classification

机译:具有成对约束的判别式学习框架,用于视频对象分类

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To deal with the problem of insufficient labeled data in video object classification, one solution is to utilize additional pairwise constraints that indicate the relationship between two examples, i.e., whether these examples belong to the same class or not. In this paper, we propose a discriminative learning approach which can incorporate pairwise constraints into a conventional margin-based learning framework. Different from previous work that usually attempts to learn better distance metrics or estimate the underlying data distribution, the proposed approach can directly model the decision boundary and, thus, require fewer model assumptions. Moreover, the proposed approach can handle both labeled data and pairwise constraints in a unified framework. In this work, we investigate two families of pairwise loss functions, namely, convex and nonconvex pairwise loss functions, and then derive three pairwise learning algorithms by plugging in the hinge loss and the logistic loss functions. The proposed learning algorithms were evaluated using a people identification task on two surveillance video data sets. The experiments demonstrated that the proposed pairwise learning algorithms considerably outperform the baseline classifiers using only labeled data and two other pairwise learning algorithms with the same amount of pairwise constraints.
机译:为了解决视频对象分类中标记数据不足的问题,一种解决方案是利用附加的成对约束来指示两个示例之间的关系,即,这些示例是否属于同一类。在本文中,我们提出了一种判别式学习方法,该方法可以将成对约束纳入常规的基于边距的学习框架中。与以往通常试图学习更好的距离度量或估计基础数据分布的工作不同,所提出的方法可以直接对决策边界进行建模,因此需要较少的模型假设。此外,所提出的方法可以在统一框架中处理标记数据和成对约束。在这项工作中,我们研究了两对成对损失函数,即凸和非凸成对损失函数,然后通过插入铰链损失和逻辑损失函数来推导三种成对学习算法。在两个监控视频数据集上使用人员识别任务对提出的学习算法进行了评估。实验表明,所提出的成对学习算法仅使用标记数据和具有相同成对约束量的其他两个成对学习算法大大优于基线分类器。

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