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Generalized Dictionaries for Multiple Instance Learning

机译:用于多实例学习的通用词典

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摘要

We present a multi-class multiple instance learning (MIL) algorithm using the dictionary learning framework where the data is given in the form of bags. Each bag contains multiple samples, called instances, out of which at least one belongs to the class of the bag. We propose a noisy-OR model and a generalized mean-based optimization framework for learning the dictionaries in the feature space. The proposed method can be viewed as a generalized dictionary learning algorithm since it reduces to a novel discriminative dictionary learning framework when there is only one instance in each bag. Various experiments using popular vision-related MIL datasets as well as the UNBC-McMaster Pain Shoulder Archive database show that the proposed method performs significantly better than the existing methods.
机译:我们使用字典学习框架提出一种多类多实例学习(MIL)算法,其中数据以袋的形式给出。每个袋子包含多个样本(称为实例),其中至少一个属于袋子的类别。我们提出了一个噪声或模型和一个基于均值的广义优化框架,用于学习特征空间中的字典。所提出的方法可以看作是一种通用的字典学习算法,因为当每个包中只有一个实例时,它可以简化为一种新颖的判别性字典学习框架。使用流行的与视觉相关的MIL数据集以及UNBC-McMaster疼痛肩膀档案数据库进行的各种实验表明,该方法的性能明显优于现有方法。

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