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Learning Localized Perceptual Similarity Metrics for Interactive Categorization

机译:学习用于交互式分类的本地化感知相似度度量

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Current similarity-based approaches to interactive fine grained categorization rely on learning metrics from holistic perceptual measurements of similarity between objects or images. However, making a single judgment of similarity at the object level can be a difficult or overwhelming task for the human user to perform. Secondly, a single general metric of similarity may not be able to adequately capture the minute differences that discriminate fine-grained categories. In this work, we propose a novel approach to interactive categorization that leverages multiple perceptual similarity metrics learned from localized and roughly aligned regions across images, reporting state-of-the-art results and outperforming methods that use a single nonlocalized similarity metric.
机译:当前用于交互式细粒度分类的基于相似度的方法依赖于从对象或图像之间的相似度的整体感知测量中获得的学习指标。然而,对于对象用户而言,在对象级别上对相似性做出单一判断可能是困难或压倒性的任务。其次,单一的通用相似性指标可能无法充分捕捉区分细粒度类别的微小差异。在这项工作中,我们提出了一种新颖的交互式分类方法,该方法利用了从跨图像的局部和大致对齐区域中学习到的多个感知相似性度量,报告最新的结果以及使用单个非局部相似性度量的出色方法。

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