面向连续语义分割的类相似度加权知识精馏

Minh-Hieu Phan, The-Anh Ta, S. L. Phung, Long Tran-Thanh, A. Bouzerdoum
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引用次数: 20

摘要

众所周知,深度学习模型在增量学习新课程时存在灾难性遗忘的问题。持续学习语义分割(CSS)是计算机视觉中的一个新兴领域。我们发现了CSS中的一个问题:一个模型往往会混淆视觉上相似的新旧类,这使得它忘记了旧的类。为了解决这一问题,我们提出了一个新的CSS框架和一种新的类相似知识蒸馏(CSW-KD)方法。我们的CSW-KD方法在与新类相似的旧类上提取先前模型的知识。这提供了两个主要的好处:(1)有选择地复习更容易被遗忘的旧课程;(2)通过将新课程与以前看过的课程联系起来,更好地学习新课程。在Pascal-Voc 2012和ADE20k数据集上的大量实验表明,我们的方法在标准CSS设置上的性能分别优于最先进的方法,分别高达7.07%和8.49%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Class Similarity Weighted Knowledge Distillation for Continual Semantic Segmentation
Deep learning models are known to suffer from the problem of catastrophic forgetting when they incrementally learn new classes. Continual learning for semantic segmentation (CSS) is an emerging field in computer vision. We identify a problem in CSS: A model tends to be confused between old and new classes that are visually similar, which makes it forget the old ones. To address this gap, we propose REMINDER - a new CSS framework and a novel class similarity knowledge distillation (CSW-KD) method. Our CSW-KD method distills the knowledge of a previous model on old classes that are similar to the new one. This provides two main benefits: (i) selectively revising old classes that are more likely to be forgotten, and (ii) better learning new classes by relating them with the previously seen classes. Extensive experiments on Pascal-Voc 2012 and ADE20k datasets show that our approach outperforms state-of-the-art methods on standard CSS settings by up to 7.07% and 8.49%, respectively.
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