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A joint learning framework for attribute models and object descriptions

机译:属性模型和对象描述的联合学习框架

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We present a new approach to learning attribute-based descriptions of objects. Unlike earlier works, we do not assume that the descriptions are hand-labeled. Instead, our approach jointly learns both the attribute classifiers and the descriptions from data. By incorporating class information into the attribute classifier learning, we get an attribute-level representation that generalizes well to both unseen examples of known classes and unseen classes. We consider two different settings, one with unlabeled images available for learning, and another without. The former corresponds to a novel transductive setting where the unlabeled images can come from new classes. Results from Animals with Attributes and a-Yahoo, a-Pascal benchmark datasets show that the learned representations give similar or even better accuracy than the hand-labeled descriptions.
机译:我们提出了一种学习基于属性的对象描述的新方法。与早期的作品不同,我们不假定描述是手工标记的。相反,我们的方法可以从数据中共同学习属性分类器和描述。通过将类信息纳入属性分类器学习中,我们获得了一种属性级别的表示形式,可以很好地推广到已知类和未知类的未见示例。我们考虑两种不同的设置,一种具有可用于学习的未标记图像,另一种无需。前者对应于一种新颖的转导设置,其中未标记的图像可以来自新的类别。具有属性的动物和a-Yahoo,a-Pascal基准数据集的结果表明,所学习的表示与手动标注的描述相比具有相似甚至更好的准确性。

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