Ranking Synthetic Features for Generative Zero-Shot Learning

Shayan Ramazi, A. Nadian-Ghomsheh
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引用次数: 1

Abstract

Zero-Shot Learning (ZSL) is an emerging learning paradigm that addresses the problem of recognizing unseen classes during training. Several studies have shown ZSL can be improved using synthetic samples of unseen classes, usually generated with a GAN and conditioned on some high- level descriptions of the desired class. This paper proposes a new generative adversarial network architecture to improve synthetic feature generation by applying a ranking step at training time. We combined two classifiers' results at the zeroshot classification step to ensure improved classification accuracy. Then we evaluated the proposed architecture using the widely used dataset AWA. Our results show an improvement of classification accuracy of 2.3% in ZSL setting and 0.15% in GZSL setting compared to the state-of-the-art.
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生成式零射击学习的综合特征排序
零射击学习(Zero-Shot Learning, ZSL)是一种新兴的学习范式,它解决了在训练过程中识别未见类的问题。几项研究表明,ZSL可以使用未见类的合成样品来改进,这些样品通常由GAN生成,并以期望类的一些高级描述为条件。本文提出了一种新的生成式对抗网络结构,通过在训练时采用排序步骤来改进合成特征的生成。在零差分类步骤中,我们将两个分类器的结果结合起来,以确保提高分类精度。然后,我们使用广泛使用的数据集AWA来评估所提出的体系结构。我们的结果表明,与最先进的分类精度相比,ZSL设置的分类精度提高了2.3%,GZSL设置的分类精度提高了0.15%。
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