Relative difficulty distillation for semantic segmentation

IF 7.3 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Science China Information Sciences Pub Date : 2024-08-20 DOI:10.1007/s11432-023-4061-2
Dong Liang, Yue Sun, Yun Du, Songcan Chen, Sheng-Jun Huang
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Abstract

Current knowledge distillation (KD) methods primarily focus on transferring various structured knowledge and designing corresponding optimization goals to encourage the student network to imitate the output of the teacher network. However, introducing too many additional optimization objectives may lead to unstable training, such as gradient conflicts. Moreover, these methods ignored the guidelines of relative learning difficulty between the teacher and student networks. Inspired by human cognitive science, in this paper, we redefine knowledge from a new perspective — the student and teacher networks’ relative difficulty of samples, and propose a pixel-level KD paradigm for semantic segmentation named relative difficulty distillation (RDD). We propose a two-stage RDD framework: teacher-full evaluated RDD (TFE-RDD) and teacher-student evaluated RDD (TSE-RDD). RDD allows the teacher network to provide effective guidance on learning focus without additional optimization goals, thus avoiding adjusting learning weights for multiple losses. Extensive experimental evaluations using a general distillation loss function on popular datasets such as Cityscapes, CamVid, Pascal VOC, and ADE20k demonstrate the effectiveness of RDD against state-of-the-art KD methods. Additionally, our research showcases that RDD can integrate with existing KD methods to improve their upper performance bound. Codes are available at https://github.com/sunyueue/RDD.git.

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语义分割的相对难度提炼
目前的知识提炼(KD)方法主要侧重于传输各种结构化知识并设计相应的优化目标,以鼓励学生网络模仿教师网络的输出。然而,引入过多的额外优化目标可能会导致训练不稳定,如梯度冲突。此外,这些方法忽略了教师网络和学生网络之间相对学习难度的准则。受人类认知科学的启发,本文从一个新的角度--学生和教师网络样本的相对难度--重新定义知识,并提出了一种像素级的语义分割 KD 范式,命名为相对难度提炼(RDD)。我们提出了一个两阶段 RDD 框架:教师全评估 RDD(TFE-RDD)和师生评估 RDD(TSE-RDD)。RDD 允许教师网络为学习重点提供有效指导,而无需额外的优化目标,从而避免了为多重损失调整学习权重。我们使用通用蒸馏损失函数对 Cityscapes、CamVid、Pascal VOC 和 ADE20k 等流行数据集进行了广泛的实验评估,证明了 RDD 与最先进的 KD 方法相比的有效性。此外,我们的研究还表明,RDD 可以与现有的 KD 方法相结合,以提高其性能上限。代码见 https://github.com/sunyueue/RDD.git。
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来源期刊
Science China Information Sciences
Science China Information Sciences COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
12.60
自引率
5.70%
发文量
224
审稿时长
8.3 months
期刊介绍: Science China Information Sciences is a dedicated journal that showcases high-quality, original research across various domains of information sciences. It encompasses Computer Science & Technologies, Control Science & Engineering, Information & Communication Engineering, Microelectronics & Solid-State Electronics, and Quantum Information, providing a platform for the dissemination of significant contributions in these fields.
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