BiModal latent dirichlet allocation for text and image

Xiaofeng Liao, Q. Jiang, Wei Zhang, Kai Zhang
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引用次数: 2

Abstract

A BiModal Latent Dirichlet Allocation Model(BM-LDA) is proposed to learn a unified representation of data that comes from both the textual and visual modalities together. The model is able to form a unified representation that mixs both the textual and visual modalities. Based on the assumption, that the images and its surrounding text share a same topic, the model learns a posterior probability density in the space of latent variable of topics that bridging over the observed multi modality inputs. It maps the high dimensional space consist of the observed variables from both modalities to a low dimensional space of topcis. Experimental result on ImageCLEF data set, which consists of bi-modality data of images and surrounding text, shows our new BM-LDA model can get a fine representation for the multi-modality data, which is useful for tasks such as retrieval and classification.
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文本和图像的双峰潜狄利克雷分配
提出了一种双峰潜在狄利克雷分配模型(BM-LDA),用于学习文本和视觉数据的统一表示。该模型能够形成混合文本和视觉形式的统一表示。基于图像及其周围文本共享同一主题的假设,该模型在主题的潜在变量空间中学习桥接观察到的多模态输入的后验概率密度。它将由两种模态的观测变量组成的高维空间映射到由主题组成的低维空间。在由图像和周围文本的双模态数据组成的ImageCLEF数据集上的实验结果表明,本文提出的BM-LDA模型可以很好地表示多模态数据,有助于检索和分类等任务。
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