Marginalized Latent Semantic Encoder for Zero-Shot Learning

Zhengming Ding, Hongfu Liu
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引用次数: 46

Abstract

Zero-shot learning has been well explored to precisely identify new unobserved classes through a visual-semantic function obtained from the existing objects. However, there exist two challenging obstacles: one is that the human-annotated semantics are insufficient to fully describe the visual samples; the other is the domain shift across existing and new classes. In this paper, we attempt to exploit the intrinsic relationship in the semantic manifold when given semantics are not enough to describe the visual objects, and enhance the generalization ability of the visual-semantic function with marginalized strategy. Specifically, we design a Marginalized Latent Semantic Encoder (MLSE), which is learned on the augmented seen visual features and the latent semantic representation. Meanwhile, latent semantics are discovered under an adaptive graph reconstruction scheme based on the provided semantics. Consequently, our proposed algorithm could enrich visual characteristics from seen classes, and well generalize to unobserved classes. Experimental results on zero-shot benchmarks demonstrate that the proposed model delivers superior performance over the state-of-the-art zero-shot learning approaches.
基于零射击学习的边缘潜在语义编码器
零射击学习已经被很好地探索,通过从现有对象中获得的视觉语义函数来精确识别新的未观察到的类。然而,存在两个具有挑战性的障碍:一是人工标注的语义不足以完全描述视觉样本;另一个是跨现有类和新类的领域转移。本文试图在给定的语义不足以描述视觉对象的情况下,挖掘语义流形中的内在关系,并利用边缘化策略增强视觉语义功能的泛化能力。具体来说,我们设计了一个边缘潜在语义编码器(MLSE),该编码器是基于增强的视觉特征和潜在语义表示进行学习的。同时,根据所提供的语义,在自适应图重构方案下发现潜在语义。因此,我们提出的算法可以丰富可见类的视觉特征,并很好地推广到未观察类。零射击基准的实验结果表明,所提出的模型比最先进的零射击学习方法具有更好的性能。
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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