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Designing Category-Level Attributes for Discriminative Visual Recognition

机译:设计用于区分性视觉识别的类别级属性

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Attribute-based representation has shown great promises for visual recognition due to its intuitive interpretation and cross-category generalization property. However, human efforts are usually involved in the attribute designing process, making the representation costly to obtain. In this paper, we propose a novel formulation to automatically design discriminative "category-level attributes", which can be efficiently encoded by a compact category-attribute matrix. The formulation allows us to achieve intuitive and critical design criteria (category-separability, learn ability) in a principled way. The designed attributes can be used for tasks of cross-category knowledge transfer, achieving superior performance over well-known attribute dataset Animals with Attributes (AwA) and a large-scale ILSVRC2010 dataset (1.2M images). This approach also leads to state-of-the-art performance on the zero-shot learning task on AwA.
机译:基于属性的表示方式由于其直观的解释和跨类别的归纳属性,已经为视觉识别显示了广阔的前景。但是,在属性设计过程中通常需要人工来完成,因此获取表示的成本很高。在本文中,我们提出了一种新颖的公式来自动设计可区分的“类别级属性”,该属性可以通过紧凑的类别-属性矩阵进行有效编码。这种表述使我们能够以有原则的方式达到直观和关键的设计标准(类别可分性,学习能力)。设计的属性可用于跨类别知识转移的任务,与知名的属性数据集“具有属性的动物”(AwA)和大规模ILSVRC2010数据集(1.2M图像)相比,具有出色的性能。这种方法还可以在AwA的零镜头学习任务上实现最先进的性能。

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