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Hierarchical Quadruplet Net for Deep Metric Learning and Network Regularization

机译:用于深度度量学习和网络正则化的分层四联网络

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Deep neural networks (DNNs) have been used successfully for various artificial intelligence tasks. However, most of these DNN models are only used for classification or regression task. In this paper, Hierarchical Quadruplet Net (HQN) is proposed to map images into Euclidean space, which can be applied for tasks based on distance comparison, such as image retrieval, clustering and classification. HQN uses more prior knowledge and performs better than previous deep metric learning methods, achieving 94.4% mean average precision (MAP) on CIFAR-10 dataset and 76.1% MAP on CIFAR-100 dataset. Moreover, the proposed loss function, Hierarchical Quadruplet Loss (HQL) also improves classification accuracy by 0.1-2.2%.
机译:深度神经网络(DNN)已成功用于各种人工智能任务。但是,大多数这些DNN模型仅用于分类或回归任务。本文提出了一种分层四重网络(HQN)将图像映射到欧几里得空间,该算法可用于基于距离比较的任务,例如图像检索,聚类和分类。 HQN使用了更多的先验知识,并且比以前的深度度量学习方法执行得更好,在CIFAR-10数据集上达到了94.4%的平均平均精度(MAP),在CIFAR-100数据集上达到了76.1%的MAP。此外,提出的损失函数“分层四元组损失(HQL)”还将分类准确度提高了0.1-2.2%。

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