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A Similarity Learning for Fine-grained Images based on the Mahalanobis Metric and the Kernel Method

机译:基于Mahalanobis度量和内核方法的细粒度图像的相似性学习

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Since most prior studies on similar image retrieval focused on the category level, image similarity learning at the fine-grained level remains challenge, which often leads to a semantic gap between the low-level visual features and high-level human perception. To solve the problem, we proposed a Mahalanobis and kernel-based similarity (Mah-Ker) method combined with features developed by the Convolutional Neural Network (CNN). Firstly, triplet constraints are introduced to characterize the fine-grained image similarity relationship which the Mahalanobis metric is trained upon. Then a kernel-based metric is proposed in the last layer of model to devise nonlinear extensions of Mahalanobis metric and further enhance the performance. Experiments based on the real VIP.com dress dataset showed that our proposed method achieved a promising higher retrieval performance than both the state-of-art fine-grained similarity model and the hand-crafted visual feature based approaches.
机译:由于大多数人关于类似图像检索的研究,专注于类别水平,在细粒度水平上的图像相似性仍然挑战,这通常导致低级视觉特征和高级人类感知之间的语义差距。为了解决这个问题,我们提出了一个Mahalanobis和基于内核的相似性(Mah-ker)方法与由卷积神经网络(CNN)开发的功能相结合。首先,引入三重态约束以表征Mahalanobis度量训练的细粒度图像相似关系。然后在上一层模型中提出了基于内核的度量,以设计Mahalanobis度量的非线性扩展,并进一步增强性能。基于真正的VIP.COM连衣裙数据集的实验表明,我们的提出方法实现了比最先进的细粒度相似模型和基于手工视觉特征的方法的有希望的更高的检索性能。

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