Generative Zero-shot Network Quantization
Xiangyu, He1,2; Jiahao, Lu1,2; Weixiang, Xu1,2; Qinghao, Hu2; Peisong, Wang2; Jian, Cheng2
2021-06
会议日期2021-6
会议地点Virtual Event
英文摘要

Convolutional neural networks are able to learn realistic image priors from numerous training samples in low-level image generation and restoration [66]. We show that, for high-level image recognition tasks, we can further recon struct “realistic” images of each category by leveraging intrinsic Batch Normalization (BN) statistics without any training data. Inspired by the popular VAE/GAN method s, we regard the zero-shot optimization process of synthet ic images as generative modeling to match the distribution of BN statistics. The generated images serve as a calibra tion set for the following zero-shot network quantizations. Our method meets the needs for quantizing models based on sensitive information, e.g., due to privacy concerns, no data is available. Extensive experiments on benchmark datasets show that, with the help of generated data, our ap proach consistently outperforms existing data-free quanti zation methods.

语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/48941]  
专题类脑芯片与系统研究
作者单位1.University of Chinese Academy of Scienses
2.Institute of Automation, Chinese Academy of Sciences
推荐引用方式
GB/T 7714
Xiangyu, He,Jiahao, Lu,Weixiang, Xu,et al. Generative Zero-shot Network Quantization[C]. 见:. Virtual Event. 2021-6.
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