文本到图像的约束嵌入空间映射生成模型

Subhajit Chaudhury, Sakyasingha Dasgupta, Asim Munawar, Md. A. Salam Khan, Ryuki Tachibana
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引用次数: 5

摘要

我们提出了一种条件生成方法,将图像和自然语言的低维嵌入映射到一个共同的潜在空间,从而提取它们之间的语义关系。首先提取特定于模态的嵌入,然后执行约束优化程序将两个嵌入空间投影到公共流形。在此基础上,提出了一种学习两个嵌入空间的条件概率分布的方法;首先,将它们映射到一个共享的潜在空间,并从这个公共空间生成单个嵌入。然而,为了使独立的条件推理能够从公共潜在空间表示中单独提取相应的嵌入,我们部署了一个代理变量技巧——其中,单个共享潜在空间被两个单独的潜在空间取代。我们设计了一个目标函数,这样,在训练过程中,我们可以通过最小化它们分布函数之间的欧几里得距离来迫使这些独立的空间彼此靠近。实验结果表明,学习到的联合模型可以泛化到具有附加颜色属性的双MNIST数字的学习概念,从而能够从各自的文本数据中生成特定的彩色图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text to image generative model using constrained embedding space mapping
We present a conditional generative method that maps low-dimensional embeddings of image and natural language to a common latent space hence extracting semantic relationships between them. The embedding specific to a modality is first extracted and subsequently a constrained optimization procedure is performed to project the two embedding spaces to a common manifold. Based on this, we present a method to learn the conditional probability distribution of the two embedding spaces; first, by mapping them to a shared latent space and generating back the individual embeddings from this common space. However, in order to enable independent conditional inference for separately extracting the corresponding embeddings from the common latent space representation, we deploy a proxy variable trick — wherein, the single shared latent space is replaced by two separate latent spaces. We design an objective function, such that, during training we can force these separate spaces to lie close to each other, by minimizing the Euclidean distance between their distribution functions. Experimental results demonstrate that the learned joint model can generalize to learning concepts of double MNIST digits with additional attributes of colors, thereby enabling the generation of specific colored images from the respective text data.
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