In this paper, we study the problem of Novel Class Discovery (NCD). NCD aims at inferring novel object categories in an unlabeled set by leveraging from prior knowledge of a labeled set containing different, but related classes. Existing approaches tackle this problem by considering multiple objective functions, usually involving specialized loss terms for the labeled and the unlabeled samples respectively, and often requiring auxiliary regularization terms. In this paper, we depart from this traditional scheme and introduce a UNified Objective function (UNO) for discovering novel classes, with the explicit purpose of favoring synergy between supervised and unsupervised learning. Using a multi-view self-labeling strategy, we generate pseudo-labels that can be treated homogeneously with ground truth labels. This leads to a single classification objective operating on both known and unknown classes. Despite its simplicity, UNO outperforms the state of the art by a significant margin on several benchmarks (~+10% on CIFAR-100 and +8% on ImageNet). The project page is available at: \url{https://ncd-uno.github.io}.
翻译:在本文中,我们研究了新类发现(NCD)的问题。NCD的目的是利用以前对含有不同但相关分类的标签集的了解,在未加标签的一组未加标签的对象类别中进行推论。现有办法解决这一问题,方法是考虑多重客观功能,通常分别涉及标签样本和未加标签样本的专门损失条件,并经常要求辅助性规范化条件。在本文中,我们偏离了这一传统办法,引入了用于发现新类的统一目标功能(UNO),其明确目的是促进受监督学习和未受监督学习之间的协同作用。我们使用多视图自我标签战略,产生假标签,可以与地面真相标签同质处理。这导致在已知和未知类别上都有一个单一的分类目标。尽管UNO简单,但它在许多基准上大大超越了艺术现状(在CIFAR-100上占10%,在图像网络上占8%)。项目网页见:\url{https://ncd-uno.github.io}。}