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Baselines for Image Annotation

机译:图像注释的基准

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摘要

Automatically assigning keywords to images is of great interest as it allows one to retrieve, index, organize and understand large collections of image data. Many techniques have been proposed for image annotation in the last decade that give reasonable performance on standard datasets. However, most of these works fail to compare their methods with simple baseline techniques to justify the need for complex models and subsequent training. In this work, we introduce a new and simple baseline technique for image annotation that treats annotation as a retrieval problem. The proposed technique utilizes global low-level image features and a simple combination of basic distance measures to find nearest neighbors of a given image. The keywords are then assigned using a greedy label transfer mechanism. The proposed baseline method outperforms the current state-of-the-art methods on two standard and one large Web dataset. We believe that such a baseline measure will provide a strong platform to compare and better understand future annotation techniques.
机译:自动为图像分配关键字非常有趣,因为它允许人们检索,索引,组织和理解大量图像数据。在过去的十年中,已经提出了许多用于图像注释的技术,它们在标准数据集上具有合理的性能。但是,大多数这些工作都无法将其方法与简单的基线技术进行比较,以证明需要复杂模型和后续培训。在这项工作中,我们为图像注释引入了一种新的简单基线技术,该技术将注释视为检索问题。所提出的技术利用全局低级图像特征和基本距离度量的简单组合来找到给定图像的最近邻居。然后使用贪婪标签传输机制分配关键字。在两个标准和一个大型Web数据集上,所提出的基线方法优于当前的最新方法。我们相信,这样的基准量度将为比较和更好地理解未来注释技术提供一个强大的平台。

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