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Beyond Nouns: Exploiting Prepositions and Comparative Adjectives for Learning Visual Classifiers

机译:超越名词:利用介词和比较形容词学习视觉分类器

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摘要

Learning visual classifiers for object recognition from weakly labeled data requires determining correspondence between image regions and semantic object classes. Most approaches use co-occurrence of “nouns” and image features over large datasets to determine the correspondence, but many correspondence ambiguities remain. We further constrain the correspondence problem by exploiting additional language constructs to improve the learning process from weakly labeled data. We consider both “prepositions” and “comparative adjectives” which are used to express relationships between objects. If the models of such relationships can be determined, they help resolve correspondence ambiguities. However, learning models of these relationships requires solving the correspondence problem. We simultaneously learn the visual features defining “nouns” and the differential visual features defining such “binary-relationships” using an EM-based approach.
机译:从弱标签数据中学习用于对象识别的视觉分类器需要确定图像区域和语义对象类别之间的对应关系。大多数方法在大型数据集上使用“名词”和图像特征的共现来确定对应关系,但是仍然存在许多对应关系模糊性。我们通过利用其他语言构造来改善从弱标签数据中学习的过程,进一步约束了对应问题。我们同时考虑用于表达客体之间关系的“介词”和“比较形容词”。如果可以确定这种关系的模型,则它们有助于解决对应关系的歧义。但是,学习这些关系的模型需要解决对应问题。我们同时使用基于EM的方法学习定义“名词”的视觉特征和定义“二进制关系”的微分视觉特征。

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