Transductive Zero-Shot Learning by Decoupled Feature Generation

Federico Marmoreo, Jacopo Cavazza, Vittorio Murino
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引用次数: 3

Abstract

In this paper, we address zero-shot learning (ZSL), the problem of recognizing categories for which no labeled visual data are available during training. We focus on the transductive setting, in which unlabelled visual data from unseen classes is available. State-of-the-art paradigms in ZSL typically exploit generative adversarial networks to synthesize visual features from semantic attributes. We posit that the main limitation of these approaches is to adopt a single model to face two problems: 1) generating realistic visual features, and 2) translating semantic attributes into visual cues. Differently, we propose to decouple such tasks, solving them separately. In particular, we train an unconditional generator to solely capture the complexity of the distribution of visual data and we subsequently pair it with a conditional generator devoted to enrich the prior knowledge of the data distribution with the semantic content of the class embeddings. We present a detailed ablation study to dissect the effect of our proposed decoupling approach, while demonstrating its superiority over the related state-of-the-art.
解耦特征生成的换能性零射学习
在本文中,我们解决了零射击学习(ZSL),即在训练过程中没有标记的视觉数据可用的分类识别问题。我们专注于转换设置,其中来自未见类的未标记视觉数据是可用的。ZSL中最先进的范式通常利用生成对抗网络从语义属性合成视觉特征。我们认为这些方法的主要限制是采用单一模型来面对两个问题:1)生成逼真的视觉特征,2)将语义属性转换为视觉线索。不同的是,我们建议解耦这些任务,分别解决它们。特别是,我们训练了一个无条件生成器来单独捕获视觉数据分布的复杂性,然后我们将其与一个条件生成器配对,该条件生成器致力于通过类嵌入的语义内容丰富数据分布的先验知识。我们提出了一项详细的消融研究来剖析我们提出的解耦方法的效果,同时展示了其优于相关技术的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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