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引用次数: 10

摘要

本文对细粒度分类领域的最新方法进行了系统的评价,这些方法显示出很大的前景。更具体地说,我们研究了一种自动分割算法,一种类似于姿态归一化池化的区域池化算法[31][28],以及一种多类优化方法。我们考虑了该领域最大和最流行的细粒度分类数据集:加州理工大学-加州大学圣地亚哥分校200只鸟数据集[27]、牛津大学102只花数据集[19]、斯坦福大学120只狗数据集[16]和牛津大学37只猫和狗数据集[21]。我们从从业者的角度来看待这项工作,回答这个问题:哪些方法可以创建最好的细粒度识别系统,并可以在实践中应用?我们的实验提供了这些方法的相对优点的见解。更重要的是,在结合了这些方法之后,我们在该领域取得了最好的结果,在鸟类和狗的数据集上分别比最先进的方法高出4.8%和10.3%。此外,我们的方法在2012年Imagenet细粒度分类挑战赛[1]上取得了37.92分的mAP,比本次挑战赛的获胜者高出5.7分。
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Benchmarking large-scale Fine-Grained Categorization
This paper presents a systematic evaluation of recent methods in the fine-grained categorization domain, which have shown significant promise. More specifically, we investigate an automatic segmentation algorithm, a region pooling algorithm which is akin to pose-normalized pooling [31] [28], and a multi-class optimization method. We considered the largest and most popular datasets for fine-grained categorization available in the field: the Caltech-UCSD 200 Birds dataset [27], the Oxford 102 Flowers dataset [19], the Stanford 120 Dogs dataset [16], and the Oxford 37 Cats and Dogs dataset [21]. We view this work from a practitioner's perspective, answering the question: what are the methods that can create the best possible fine-grained recognition system which can be applied in practice? Our experiments provide insights of the relative merit of these methods. More importantly, after combining the methods, we achieve the top results in the field, outperforming the state-of-the-art methods by 4.8% and 10.3% for birds and dogs datasets, respectively. Additionally, our method achieves a mAP of 37.92 on the of 2012 Imagenet Fine-Grained Categorization Challenge [1], which outperforms the winner of this challenge by 5.7 points.
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