Conditional generative data-free knowledge distillation

Xinyi Yu, Ling Yan, Yang Yang, Libo Zhou, Linlin Ou
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引用次数: 1

Abstract

Knowledge distillation has made remarkable achievements in model compression. However, most existing methods require the original training data, which is usually unavailable due to privacy and security issues. In this paper, we propose a conditional generative data-free knowledge distillation (CGDD) framework for training lightweight networks without any training data. This method realizes efficient knowledge distillation based on conditional image generation. Specifically, we treat the preset labels as ground truth to train a conditional generator in a semi-supervised manner. The trained generator can produce specified classes of training images. For training the student network, we force it to extract the knowledge hidden in teacher feature maps, which provide crucial cues for the learning process. Moreover, an adversarial training framework for promoting distillation performance is constructed by designing several loss functions. This framework helps the student model to explore larger data space. To demonstrate the effectiveness of the proposed method, we conduct extensive experiments on different datasets. Compared with other data-free works, our work obtains state-of-the-art results on CIFAR100, Caltech101, and different versions of ImageNet datasets. The codes will be released.
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条件生成无数据知识蒸馏
知识蒸馏在模型压缩方面取得了显著的成就。然而,大多数现有的方法都需要原始的训练数据,由于隐私和安全问题,这些数据通常是不可用的。在本文中,我们提出了一个条件生成无数据知识蒸馏(CGDD)框架,用于在没有任何训练数据的情况下训练轻量级网络。该方法实现了基于条件图像生成的高效知识蒸馏。具体来说,我们将预设标签作为基础真理,以半监督的方式训练条件生成器。训练后的生成器可以生成指定类别的训练图像。为了训练学生网络,我们强迫它提取隐藏在教师特征图中的知识,这些特征图为学习过程提供了关键的线索。此外,通过设计几个损失函数,构建了一个提升蒸馏性能的对抗训练框架。这个框架帮助学生模型探索更大的数据空间。为了证明所提出方法的有效性,我们在不同的数据集上进行了大量的实验。与其他无数据工作相比,我们的工作在CIFAR100、Caltech101和不同版本的ImageNet数据集上获得了最先进的结果。代码将被发布。
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