论文标题
提示和窍门,以供详尽的精细颗粒认可:从WebFG 2020挑战中学习
Tips and Tricks for Webly-Supervised Fine-Grained Recognition: Learning from the WebFG 2020 Challenge
论文作者
论文摘要
WebFG 2020是Nanjing科学技术大学,爱丁堡大学,南京大学,阿德莱德大学,瓦瑟达大学等主持的国际挑战。这项挑战主要引起人们对韦布利郡治疗的细粒度良好的识别问题的关注。在文献中,现有的深度学习方法高度依赖于大规模和高质量标记的培训数据,这对它们在现实世界应用中的可实用性和可扩展性构成了限制。特别是,为了获得细粒度的识别,一项需要专业知识进行标签的视觉任务,获取标记的培训数据的成本很高。获得大量高质量培训数据会导致极端困难。因此,利用免费的Web数据来培训细粒度的识别模型,吸引了细粒度社区研究人员的注意力日益增长。这项挑战预计参与者将开发细化的细粒识别方法,该方法利用培训细粒识别模型中的Web图像,以减轻深度学习方法对大规模手动标记数据集的极端依赖性,并增强其实用性和可实用性和可扩展性。在这份技术报告中,我们将共有54支竞争团队的最高WebFG 2020解决方案汇总在一起,并讨论哪些方法在整个获奖团队中运作良好,而令人惊讶的是什么无济于事。
WebFG 2020 is an international challenge hosted by Nanjing University of Science and Technology, University of Edinburgh, Nanjing University, The University of Adelaide, Waseda University, etc. This challenge mainly pays attention to the webly-supervised fine-grained recognition problem. In the literature, existing deep learning methods highly rely on large-scale and high-quality labeled training data, which poses a limitation to their practicability and scalability in real world applications. In particular, for fine-grained recognition, a visual task that requires professional knowledge for labeling, the cost of acquiring labeled training data is quite high. It causes extreme difficulties to obtain a large amount of high-quality training data. Therefore, utilizing free web data to train fine-grained recognition models has attracted increasing attentions from researchers in the fine-grained community. This challenge expects participants to develop webly-supervised fine-grained recognition methods, which leverages web images in training fine-grained recognition models to ease the extreme dependence of deep learning methods on large-scale manually labeled datasets and to enhance their practicability and scalability. In this technical report, we have pulled together the top WebFG 2020 solutions of total 54 competing teams, and discuss what methods worked best across the set of winning teams, and what surprisingly did not help.