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Large Scale Fine-Grained Categorization and Domain-Specific Transfer Learning

机译:大规模细粒度分类和特定于域的转移学习

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Transferring the knowledge learned from large scale datasets (e.g., ImageNet) via fine-tuning offers an effective solution for domain-specific fine-grained visual categorization (FGVC) tasks (e.g., recognizing bird species or car make & model). In such scenarios, data annotation often calls for specialized domain knowledge and thus is difficult to scale. In this work, we first tackle a problem in large scale FGVC. Our method won first place in iNaturalist 2017 large scale species classification challenge. Central to the success of our approach is a training scheme that uses higher image resolution and deals with the long-tailed distribution of training data. Next, we study transfer learning via fine-tuning from large scale datasets to small scale, domain-specific FGVC datasets. We propose a measure to estimate domain similarity via Earth Mover's Distance and demonstrate that transfer learning benefits from pre-training on a source domain that is similar to the target domain by this measure. Our proposed transfer learning outperforms ImageNet pre-training and obtains state-of-the-art results on multiple commonly used FGVC datasets.
机译:通过微调转移从大规模数据集(例如,ImageNet)学习的知识为域特定的细粒度视觉分类(FGVC)任务提供了有效的解决方案(例如,识别鸟类或汽车制作和模型)。在这种情况下,数据注释通常需要专门的域知识,因此难以扩展。在这项工作中,我们首先在大规模FGC中解决问题。我们的方法赢得了2017年的自然主义者的第一名大规模物种分类挑战。我们的方法的成功核心是一种培训方案,使用更高的图像分辨率并处理培训数据的长尾分布。接下来,我们通过从大规模数据集到小规模,特定于域的FGVC数据集来研究转移学习。我们提出了一种通过地球移动器距离来估计域相似度的措施,并证明从该措施类似于目标域的源域上的源域预先训练转移学习效益。我们建议的转移学习胜过ImageNet预训练,并获得多个常用的FGVC数据集的最先进结果。

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