Novel category discovery aims at adapting models trained on known categories to novel categories. Previous works only focus on the scenario where known and novel categories are of the same granularity. In this paper, we investigate a new practical scenario called Fine-grained Category Discovery under Coarse-grained supervision (FCDC). FCDC aims at discovering fine-grained categories with only coarse-grained labeled data, which can adapt models to categories of different granularity from known ones and reduce significant labeling cost. It is also a challenging task since supervised training on coarse-grained categories tends to focus on inter-class distance (distance between coarse-grained classes) but ignore intra-class distance (distance between fine-grained sub-classes) which is essential for separating fine-grained categories. Considering most current methods cannot transfer knowledge from coarse-grained level to fine-grained level, we propose a hierarchical weighted self-contrastive network by building a novel weighted self-contrastive module and combining it with supervised learning in a hierarchical manner. Extensive experiments on public datasets show both effectiveness and efficiency of our model over compared methods. Code and data are available at https://github.com/Lackel/Hierarchical_Weighted_SCL.
翻译:创新类发现旨在将已知类别培训的模型改造成新类。 先前的工作仅侧重于已知类别和新类的已知和新类是同一颗粒的情景。 在本文中,我们调查了一个新的实用情景, 名为“ 粗皮类发现分类 ” 。 FCDC 旨在发现微粒类,只有粗皮类标签数据才能发现微粒类,这些只有粗皮类标签数据,能够将模型改成已知类别的不同颗粒类,并降低重要的标签成本。 这也是一项具有挑战性的任务, 因为对粗皮类的监管培训往往侧重于阶级间距离( 粗皮类之间的距离),而忽视阶级内部距离( 细皮类子类之间的距离 ),这对于区分细皮类类别至关重要。 考虑到大多数目前的方法无法将知识从粗皮类水平转移到微颗粒类水平, 我们建议建立一个等级加权自调网络, 建立一个新型的加权自我调控模块, 并且以等级化的方式将其与监督学习相结合。 在公共数据中进行广泛的实验, ASB/ 比较 。 在公共数据中, ASqual 。