Multiclass transfer learning from unconstrained priors

Jie Luo, T. Tommasi, B. Caputo
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引用次数: 111

Abstract

The vast majority of transfer learning methods proposed in the visual recognition domain over the last years addresses the problem of object category detection, assuming a strong control over the priors from which transfer is done. This is a strict condition, as it concretely limits the use of this type of approach in several settings: for instance, it does not allow in general to use off-the-shelf models as priors. Moreover, the lack of a multiclass formulation for most of the existing transfer learning algorithms prevents using them for object categorization problems, where their use might be beneficial, especially when the number of categories grows and it becomes harder to get enough annotated data for training standard learning methods. This paper presents a multiclass transfer learning algorithm that allows to take advantage of priors built over different features and with different learning methods than the one used for learning the new task. We use the priors as experts, and transfer their outputs to the new incoming samples as additional information. We cast the learning problem within the Multi Kernel Learning framework. The resulting formulation solves efficiently a joint optimization problem that determines from where and how much to transfer, with a principled multiclass formulation. Extensive experiments illustrate the value of this approach.
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基于无约束先验的多类迁移学习
过去几年在视觉识别领域提出的绝大多数迁移学习方法都解决了对象类别检测的问题,假设对进行迁移的先验有很强的控制。这是一个严格的条件,因为它具体地限制了这种方法在几种情况下的使用:例如,它通常不允许使用现成的模型作为先验。此外,大多数现有的迁移学习算法缺乏多类公式,因此无法将它们用于对象分类问题,而在这些问题中,它们的使用可能是有益的,特别是当类别数量增长并且难以获得足够的注释数据来训练标准学习方法时。本文提出了一种多类迁移学习算法,该算法允许利用基于不同特征和不同学习方法构建的先验,而不是用于学习新任务的先验。我们使用先验作为专家,并将其输出作为附加信息传递给新的传入样本。我们将学习问题置于多核学习框架中。由此产生的公式有效地解决了一个联合优化问题,该问题确定了从哪里转移和转移多少,并具有原则性的多类公式。大量的实验证明了这种方法的价值。
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