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Unbiased feature generating for generalized zero-shot learning

机译:用于广义零样本学习的无偏特征生成

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摘要

Generalized zero-shot learning (GZSL) aims at training a model on seen data to recognize objects from both seen and unseen classes. Existing generated-based methods show encouraging performance by directly generating unseen samples. However, due to insufficient exploration of unseen label space and limited class-wise semantic descriptions, existing methods still face the bias problem. In this paper, we divide the bias problem into seen-biased and neighbor-biased problems and propose a GZSL method named Unbiased Feature Generating. For the seen-biased problem, we train a classifier in complete label space by introducing the discriminative information contained in fake unseen samples. For the neighbor-biased problem, we generate untypical samples and refine the classification boundaries among neighbor classes. The classifier in complete label space and generator are trained in an iterative process to complement each other. The experimental results on four widely used datasets verify our method achieves encouraging performance compared with the state-of-the-art methods.
机译:广义零样本学习 (GZSL) 旨在根据可见数据训练模型,以识别来自可见和不可见类别的对象。现有的基于生成的方法通过直接生成看不见的样本显示出令人鼓舞的性能。然而,由于对看不见的标签空间探索不足,类语义描述有限,现有方法仍面临偏差问题。在本文中,我们将偏差问题分为可见偏差问题和邻居偏差问题,并提出了一种名为无偏特征生成的GZSL方法。对于看得见偏向的问题,我们通过引入假看不见样本中包含的判别信息,在完整的标签空间中训练分类器。对于邻域偏置问题,我们生成非典型样本并细化邻域类之间的分类边界。完整标签空间中的分类器和生成器在迭代过程中进行训练以相互补充。在四个广泛使用的数据集上的实验结果验证了与现有方法相比,该方法取得了令人鼓舞的性能。

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