同时进行图像分类和标注

Chong Wang, D. Blei, Li Fei-Fei
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引用次数: 612

摘要

图像分类和标注是计算机视觉中的重要问题,但很少同时考虑。直观地说,注释为类标签提供证据,类标签为注释提供证据。例如,一类highway的图像更有可能被注释为“road”、“car”和“traffic”,而不是“fish”、“boat”和“scuba”。在本文中,我们开发了一种新的概率模型来联合建模图像,它的类标签和注释。我们的模型将类标签视为图像的全局描述,并将注释术语视为图像部分的局部描述。其潜在的概率假设自然地整合了这两种信息来源。我们推导了一种基于变分方法的近似推理和估计算法,以及用于分类和注释新图像的有效近似。我们在两个真实世界的图像数据集上检查了我们的模型的性能,说明单个模型提供了具有竞争力的注释性能和更好的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous image classification and annotation
Image classification and annotation are important problems in computer vision, but rarely considered together. Intuitively, annotations provide evidence for the class label, and the class label provides evidence for annotations. For example, an image of class highway is more likely annotated with words “road,” “car,” and “traffic” than words “fish,” “boat,” and “scuba.” In this paper, we develop a new probabilistic model for jointly modeling the image, its class label, and its annotations. Our model treats the class label as a global description of the image, and treats annotation terms as local descriptions of parts of the image. Its underlying probabilistic assumptions naturally integrate these two sources of information. We derive an approximate inference and estimation algorithms based on variational methods, as well as efficient approximations for classifying and annotating new images. We examine the performance of our model on two real-world image data sets, illustrating that a single model provides competitive annotation performance, and superior classification performance.
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