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CLEAR: Cumulative LEARning for One-Shot One-Class Image Recognition

机译:清晰:一键式一类图像识别的累积学习

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This work addresses the novel problem of one-shot one-class classification. The goal is to estimate a classification decision boundary for a novel class based on a single image example. Our method exploits transfer learning to model the transformation from a representation of the input, extracted by a Convolutional Neural Network, to a classification decision boundary. We use a deep neural network to learn this transformation from a large labelled dataset of images and their associated class decision boundaries generated from ImageNet, and then apply the learned decision boundary to classify subsequent query images. We tested our approach on several benchmark datasets and significantly outperformed the baseline methods.
机译:这项工作解决了单次分类的新颖问题。目的是基于单个图像示例来估计新颖类的分类决策边界。我们的方法利用转移学习来建模从卷积神经网络提取的输入表示到分类决策边界的转换。我们使用一个深度神经网络从图像的大型标签数据集及其从ImageNet生成的相关类决策边界中学习这种转换,然后应用学习的决策边界对后续查询图像进行分类。我们在几个基准数据集上测试了我们的方法,并且明显优于基准方法。

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