通过知识提炼改进神经常微分方程

IF 1.5 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Haoyu Chu, Shikui Wei, Qiming Lu, Yao Zhao
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引用次数: 0

摘要

神经常微分方程(ODE)(Neural ODEs)利用神经网络指定的 ODEs 来构建隐藏单元的连续动态,在许多任务中都取得了可喜的成果。然而,神经 ODE 在图像识别任务中的表现仍然不佳。可能的原因是神经 ODEs 常用的单次编码向量无法提供足够的监督信息。我们提出了一种新的基于知识提炼的训练方法,以构建更强大、更稳健的神经 ODE,用于图像识别任务。特别是,神经 ODE 的训练被模拟成一个师生学习过程,其中 ResNets 被提议作为教师模型,以提供更丰富的监督信息。实验结果表明,在街景门牌号、CIFAR10、CIFAR100 和 Food-101 中,新的训练方式能将神经 ODE 的分类准确率分别提高 5.17%、24.75%、7.20% 和 8.99%。此外,还评估了知识提炼在神经 ODE 中对对抗性示例的鲁棒性的影响。作者发现,结合知识蒸馏和时间跨度的增加,可以显著提高神经 ODE 的鲁棒性。作者从底层动态系统的角度分析了性能的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving neural ordinary differential equations via knowledge distillation

Improving neural ordinary differential equations via knowledge distillation

Neural ordinary differential equations (ODEs) (Neural ODEs) construct the continuous dynamics of hidden units using ODEs specified by a neural network, demonstrating promising results on many tasks. However, Neural ODEs still do not perform well on image recognition tasks. The possible reason is that the one-hot encoding vector commonly used in Neural ODEs can not provide enough supervised information. A new training based on knowledge distillation is proposed to construct more powerful and robust Neural ODEs fitting image recognition tasks. Specially, the training of Neural ODEs is modelled into a teacher-student learning process, in which ResNets are proposed as the teacher model to provide richer supervised information. The experimental results show that the new training manner can improve the classification accuracy of Neural ODEs by 5.17%, 24.75%, 7.20%, and 8.99%, on Street View House Numbers, CIFAR10, CIFAR100, and Food-101, respectively. In addition, the effect of knowledge distillation is also evaluated in Neural ODEs on robustness against adversarial examples. The authors discover that incorporating knowledge distillation, coupled with the increase of the time horizon, can significantly enhance the robustness of Neural ODEs. The performance improvement is analysed from the perspective of the underlying dynamical system.

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来源期刊
IET Computer Vision
IET Computer Vision 工程技术-工程:电子与电气
CiteScore
3.30
自引率
11.80%
发文量
76
审稿时长
3.4 months
期刊介绍: IET Computer Vision seeks original research papers in a wide range of areas of computer vision. The vision of the journal is to publish the highest quality research work that is relevant and topical to the field, but not forgetting those works that aim to introduce new horizons and set the agenda for future avenues of research in computer vision. IET Computer Vision welcomes submissions on the following topics: Biologically and perceptually motivated approaches to low level vision (feature detection, etc.); Perceptual grouping and organisation Representation, analysis and matching of 2D and 3D shape Shape-from-X Object recognition Image understanding Learning with visual inputs Motion analysis and object tracking Multiview scene analysis Cognitive approaches in low, mid and high level vision Control in visual systems Colour, reflectance and light Statistical and probabilistic models Face and gesture Surveillance Biometrics and security Robotics Vehicle guidance Automatic model aquisition Medical image analysis and understanding Aerial scene analysis and remote sensing Deep learning models in computer vision Both methodological and applications orientated papers are welcome. Manuscripts submitted are expected to include a detailed and analytical review of the literature and state-of-the-art exposition of the original proposed research and its methodology, its thorough experimental evaluation, and last but not least, comparative evaluation against relevant and state-of-the-art methods. Submissions not abiding by these minimum requirements may be returned to authors without being sent to review. Special Issues Current Call for Papers: Computer Vision for Smart Cameras and Camera Networks - https://digital-library.theiet.org/files/IET_CVI_SC.pdf Computer Vision for the Creative Industries - https://digital-library.theiet.org/files/IET_CVI_CVCI.pdf
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