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Three things everyone should know to improve object retrieval

机译:每个人都应该知道的三件事,以改善对象检索

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The objective of this work is object retrieval in large scale image datasets, where the object is specified by an image query and retrieval should be immediate at run time in the manner of Video Google [28]. We make the following three contributions: (i) a new method to compare SIFT descriptors (RootSIFT) which yields superior performance without increasing processing or storage requirements; (ii) a novel method for query expansion where a richer model for the query is learnt discriminatively in a form suited to immediate retrieval through efficient use of the inverted index; (iii) an improvement of the image augmentation method proposed by Turcot and Lowe [29], where only the augmenting features which are spatially consistent with the augmented image are kept. We evaluate these three methods over a number of standard benchmark datasets (Oxford Buildings 5k and 105k, and Paris 6k) and demonstrate substantial improvements in retrieval performance whilst maintaining immediate retrieval speeds. Combining these complementary methods achieves a new state-of-the-art performance on these datasets.
机译:本作工作的目的是在大规模图像数据集中检索,其中对象由图像查询指定,并且检索应该以视频的方式立即以视频[28]为单位。我们提出以下三个贡献:(i)比较SIFT描述符(ROOTSIFT)的新方法,这在不增加处理或存储要求的情况下产生卓越的性能; (ii)用于查询扩展的新方法,其中通过有效地使用倒指数,以适于立即检索的形式判别地学习了对查询的更丰富模型; (iii)改进Tutcot和Lowe [29]所提出的图像增强方法,其中仅保留与增强图像的空间一致的增强特征。我们在许多标准基准数据集(牛津大厦5K和105K和Paris 6K)上评估这三种方法,并在保持立即检索速度的同时证明检索性能的大量改进。结合这些互补方法在这些数据集中实现了新的最先进的性能。

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