论文标题
特定于时尚的属性通过双高斯视觉语义嵌入解释
Fashion-Specific Attributes Interpretation via Dual Gaussian Visual-Semantic Embedding
论文作者
论文摘要
已经研究了几种将各种组件(例如单词,属性和图像)映射到嵌入式空间中的技术。他们中的大多数估计目标实体的嵌入式表示为投射空间中的一个点。一些模型,例如Word2Gauss,假设嵌入式表示背后的概率分布,这使得可以更详细地捕获和考虑嵌入式目标组件的含义的扩展或方差。我们研究了将嵌入式表示形式估算为解释时尚特定于抽象和难以理解的术语的概率分布的方法。 Terms, such as "casual," "adult-casual,'' "beauty-casual," and "formal," are extremely subjective and abstract and are difficult for both experts and non-experts to understand, which discourages users from trying new fashion. We propose an end-to-end model called dual Gaussian visual-semantic embedding, which maps images and attributes in the same projective space and enables the interpretation of the meaning of these terms by its broad applications. We通过涉及图像和属性映射,图像检索和重新排序技术的多方面实验以及对损耗函数中包含的距离度量的详细理论/分析讨论的多方面实验来证明所提出的方法的有效性。
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 representations as probability distributions for the interpretation of fashion-specific abstract and difficult-to-understand terms. Terms, such as "casual," "adult-casual,'' "beauty-casual," and "formal," are extremely subjective and abstract and are difficult for both experts and non-experts to understand, which discourages users from trying new fashion. We propose an end-to-end model called dual Gaussian visual-semantic embedding, which maps images and attributes in the same projective space and enables the interpretation of the meaning of these terms by its broad applications. We demonstrate the effectiveness of the proposed method through multifaceted experiments involving image and attribute mapping, image retrieval and re-ordering techniques, and a detailed theoretical/analytical discussion of the distance measure included in the loss function.