论文标题
通过植入和压缩的逐步学习
Incremental Few-Shot Learning via Implanting and Compressing
论文作者
论文摘要
这项工作着重于解决富于几次学习(IFSL)的具有挑战性但现实的视觉任务,该任务要求模型只能从几个示例中不断学习新颖的课程,同时又不忘记预先训练的基础类别。我们的研究表明,IFSL的挑战在于阶层间的分离和新颖的级别表示。 DUR至类内变化,新颖的类可能隐含地利用多个基类的知识来构建其特征表示。因此,仅仅重用预训练的嵌入空间可能会导致分散的特征分布并导致类别混乱。为了解决此类问题,我们提出了一个两步学习策略,称为\ textbf {im}种植和\ textbf {co} mpressing(\ textbf {imco}),以系统的方式优化了特征空间分区和新颖的类重建。具体来说,在\ textbf {植入}步骤中,我们建议借助于数据丰富的基础集,以模仿新类的数据分布,以便模型可以学习有益于区分基础和其他看不见的类的语义丰富的功能。在\ textbf {compressing}步骤中,我们适应特征提取器以精确表示每个新颖的类,以增强阶层的紧凑性,以及一个正则化参数更新规则,以防止积极的模型更新。最后,我们证明,IMCO在图像分类任务和更具挑战性的对象检测任务中都优于具有显着优势的竞争基线。
This work focuses on tackling the challenging but realistic visual task of Incremental Few-Shot Learning (IFSL), which requires a model to continually learn novel classes from only a few examples while not forgetting the base classes on which it was pre-trained. Our study reveals that the challenges of IFSL lie in both inter-class separation and novel-class representation. Dur to intra-class variation, a novel class may implicitly leverage the knowledge from multiple base classes to construct its feature representation. Hence, simply reusing the pre-trained embedding space could lead to a scattered feature distribution and result in category confusion. To address such issues, we propose a two-step learning strategy referred to as \textbf{Im}planting and \textbf{Co}mpressing (\textbf{IMCO}), which optimizes both feature space partition and novel class reconstruction in a systematic manner. Specifically, in the \textbf{Implanting} step, we propose to mimic the data distribution of novel classes with the assistance of data-abundant base set, so that a model could learn semantically-rich features that are beneficial for discriminating between the base and other unseen classes. In the \textbf{Compressing} step, we adapt the feature extractor to precisely represent each novel class for enhancing intra-class compactness, together with a regularized parameter updating rule for preventing aggressive model updating. Finally, we demonstrate that IMCO outperforms competing baselines with a significant margin, both in image classification task and more challenging object detection task.