2022
DOI: 10.48550/arxiv.2210.17417
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Fashion-Specific Attributes Interpretation via Dual Gaussian Visual-Semantic Embedding

Abstract: Several techniques to map various types of components, such as words, attributes, and images, into the embedded space have been studied. Most of them estimate the embedded representation of target entity as a point in the projective space. Some models, such as Word2Gauss, assume a probability distribution behind the embedded representation, which enables the spread or variance of the meaning of embedded target components to be captured and considered in more detail. We examine the method of estimating embedded… Show more

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