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Zero-Shot Learning With Transferred Samples

机译:零样本学习与转移样本

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摘要

By transferring knowledge from the abundant labeled samples of known source classes, zero-shot learning (ZSL) makes it possible to train recognition models for novel target classes that have no labeled samples. Conventional ZSL approaches usually adopt a two-step recognition strategy, in which the test sample is projected into an intermediary space in the first step, and then the recognition is carried out by considering the similarity between the sample and target classes in the intermediary space. Due to this redundant intermediate transformation, information loss is unavoidable, thus degrading the performance of overall system. Rather than adopting this two-step strategy, in this paper, we propose a novel one-step recognition framework that is able to perform recognition in the original feature space by using directly trained classifiers. To address the lack of labeled samples for training supervised classifiers for the target classes, we propose to transfer samples from source classes with pseudo labels assigned, in which the transferred samples are selected based on their transferability and diversity. Moreover, to account for the unreliability of pseudo labels of transferred samples, we modify the standard support vector machine formulation such that the unreliable positive samples can be recognized and suppressed in the training phase. The entire framework is fairly general with the possibility of further extensions to several common ZSL settings. Extensive experiments on four benchmark data sets demonstrate the superiority of the proposed framework, compared with the state-of-the-art approaches, in various settings.
机译:通过从已知源类别的大量标记样本中转移知识,零击学习(ZSL)可以训练针对没有标记样本的新型目标类别的识别模型。传统的ZSL方法通常采用两步识别策略,首先将测试样本投射到中间空间中,然后考虑中间空间中样本与目标类别之间的相似性来进行识别。由于这种冗余的中间转换,信息丢失是不可避免的,从而降低了整个系统的性能。本文没有采用这种两步策略,而是提出了一种新颖的单步识别框架,该框架能够通过使用直接训练的分类器在原始特征空间中执行识别。为了解决为训练目标类别的监督分类器而缺乏标记样本的问题,我们建议从分配了伪标签的源类别中转移样本,其中根据转移样本的可迁移性和多样性选择转移样本。此外,为解决转移样本的伪标签的不可靠性,我们修改了标准支持向量机公式,以便可以在训练阶段识别和抑制不可靠的阳性样本。整个框架相当通用,可以进一步扩展到几个常见的ZSL设置。在四个基准数据集上进行的大量实验证明,与各种方法中的最新方法相比,该框架的优越性。

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