Both generalized and incremental few-shot learning have to deal with three major challenges: learning novel classes from only few samples per class, preventing catastrophic forgetting of base classes, and classifier calibration across novel and base classes. In this work we propose a three-stage framework that allows to explicitly and effectively address these challenges. While the first phase learns base classes with many samples, the second phase learns a calibrated classifier for novel classes from few samples while also preventing catastrophic forgetting. In the final phase, calibration is achieved across all classes. We evaluate the proposed framework on four challenging benchmark datasets for image and video few-shot classification and obtain state-of-the-art results for both generalized and incremental few shot learning.
翻译:普通和递增的少见学习必须应对三大挑战:从每类只有少量样本的样本中学习小类,防止灾难性地忘记基础类,以及跨越新颖和基础类的分类校准。在这项工作中,我们提出了一个三阶段框架,允许明确和有效地应对这些挑战。虽然第一阶段用许多样本学习基础类,但第二阶段则从少数样本中学习小类校准分类器,同时防止灾难性的遗漏。在最后阶段,在所有类别中都实现校准。我们评估了四个具有挑战性的基准数据集的拟议框架,用于图像和视频少见分类,并为普遍和递增的少见学习获取最新结果。