一种统一的概率方法来建模属性和对象之间的关系

Xiaoyang Wang, Q. Ji
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引用次数: 79

摘要

本文提出了一种统一的概率模型,对属性和目标之间的关系进行建模,用于属性预测和目标识别。作为对象的语义上有意义的属性列表,属性通常在统计上相互关联。在本文中,我们提出了一个统一的概率模型来自动发现和捕获对象依赖和对象独立的属性关系。该模型利用捕获的关系进行属性预测和目标识别。在四个基准属性数据集上的实验证明了该统一模型在标准和零射击学习情况下提高属性预测和目标识别的有效性。
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A Unified Probabilistic Approach Modeling Relationships between Attributes and Objects
This paper proposes a unified probabilistic model to model the relationships between attributes and objects for attribute prediction and object recognition. As a list of semantically meaningful properties of objects, attributes generally relate to each other statistically. In this paper, we propose a unified probabilistic model to automatically discover and capture both the object-dependent and object-independent attribute relationships. The model utilizes the captured relationships to benefit both attribute prediction and object recognition. Experiments on four benchmark attribute datasets demonstrate the effectiveness of the proposed unified model for improving attribute prediction as well as object recognition in both standard and zero-shot learning cases.
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