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An Inverse Mapping with Manifold Alignment for Zero-Shot Learning

机译:具有零对齐学习的流形对准的逆映射

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Zero-shot learning aims to recognize objects from unseen classes, where samples are not available at the training stage, by transferring knowledge from seen classes, where labeled samples are provided. It bridges seen and unseen classes via a shared semantic space such as class attribute space or class prototype space. While previous approaches have tried to learning a mapping function from the visual space to the semantic space with different objective functions, we take a different approach and try to map from the semantic space to the visual space. The inverse mapping predicts the visual feature prototype of each unseen class via the semantic vector for image classification. We also propose a heuristic-algorithm to select a high density set from data of each seen class. The visual feature prototypes from the high density sets are more discriminative, which is benefit to the classification. Our approach is evaluated for zero-shot recognition on four benchmark data sets and significantly outperforms the state-of-the-art methods on AWA, SUN, APY.
机译:零镜头学习旨在通过转移来自提供标签的样本的可见类的知识,来识别训练阶段没有样本的看不见的类别的对象。它通过共享的语义空间(如类属性空间或类原型空间)将可见和不可见的类连接起来。虽然先前的方法试图学习具有不同目标函数的从视觉空间到语义空间的映射功能,但我们采用了不同的方法,并尝试从语义空间到视觉空间进行映射。逆映射通过用于图像分类的语义矢量预测每个看不见类别的视觉特征原型。我们还提出一种启发式算法,以从每个可见类别的数据中选择一个高密度集合。高密度集的视觉特征原型更具区分性,这有利于分类。我们的方法针对四个基准数据集进行了零击识别的评估,并且明显优于AWA,SUN,APY的最新方法。

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