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Hybrid Relative Attributes Based on Sparse Coding for Zero-Shot Image Classification

机译:基于稀疏编码的零图像分类混合相对属性

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摘要

As a specific case of image recognition, zero-shot image classification is difficult to solve since its training set cannot cover all the categories of the testing set. From the view point of human vision recognition, the objects can be recognized through the visible and nameable description to the properties. To be the semantic description of the object property, attributes can be taken as a bridge between the seen and unseen categories, which are capable of using into zero-shot image classification. There are mainly binary attributes and relative attributes for zero-shot classification, where the relative attributes have the ability to catch more general sematic relationship than the binary ones. But relative attributes do not always work in zero-shot classification for those categories having similar relative strength attributes. Aiming at solving the defect of the relative attributes in describing the similar categories, we propose to construct the Hybrid Relative Attributes based on Sparse Coding (SC-HRA). First, sparse coding is implemented on low-level features to get nonsemantic relative attributes, which are the necessary complement to the existing relative attributes. After that, they are integrated with the relative attributes to form the hybrid relative attributes (HRA). HRA ranking functions are then learned by the relative attribute learning. Finally, the class label is obtained according to the predicted ranking results of HRA and the ranking relations of HRA among the categories. To verify the effectiveness of SC-HRA, the extensive experiments are conducted on the datasets of faces and natural scenes. The results show that SC-HRA acquires the higher classification accuracy and AUC value.
机译:作为图像识别的一种特殊情况,由于其训练集无法覆盖测试集的所有类别,因此很难解决零镜头图像分类问题。从人类视觉识别的角度来看,可以通过对属性的可见和可命名的描述来识别对象。为了对对象属性进行语义描述,可以将属性用作可见和不可见类别之间的桥梁,这些类别可以用于零镜头图像分类。零镜头分类主要有二进制属性和相对属性,其中相对属性比二进制属性具有捕获更多一般语义关系的能力。但是,对于那些具有相似相对强度属性的类别,相对属性并不总是在零射分类中起​​作用。为了解决描述相似类别时相对属性的缺陷,我们提出了基于稀疏编码(SC-HRA)的混合相对属性的构造方法。首先,对低级特征实施稀疏编码以获得非语义的相对属性,这是对现有相对属性的必要补充。之后,将它们与相对属性集成在一起以形成混合相对属性(HRA)。然后通过相对属性学习来学习HRA排名功能。最后,根据HRA的预测排名结果和HRA在各类别之间的排名关系获得类别标签。为了验证SC-HRA的有效性,对面部和自然场景的数据集进行了广泛的实验。结果表明,SC-HRA具有较高的分类精度和AUC值。

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  • 来源
    《Mathematical Problems in Engineering 》 |2019年第5期| 7390327.1-7390327.13| 共13页
  • 作者

    Lu Nannan; Sun Yanjing; Yun Xiao;

  • 作者单位

    China Univ Min & Technol, Sch Informat & Control Engn, Xuzhou, Jiangsu, Peoples R China;

    China Univ Min & Technol, Sch Informat & Control Engn, Xuzhou, Jiangsu, Peoples R China;

    China Univ Min & Technol, Sch Informat & Control Engn, Xuzhou, Jiangsu, Peoples R China;

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