Scalable Compression of Deep Neural Networks
August 26, 2016 Β· Declared Dead Β· π ACM Multimedia
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Authors
Xing Wang, Jie Liang
arXiv ID
1608.07365
Category
cs.CV: Computer Vision
Citations
4
Venue
ACM Multimedia
Last Checked
3 months ago
Abstract
Deep neural networks generally involve some layers with mil- lions of parameters, making them difficult to be deployed and updated on devices with limited resources such as mobile phones and other smart embedded systems. In this paper, we propose a scalable representation of the network parameters, so that different applications can select the most suitable bit rate of the network based on their own storage constraints. Moreover, when a device needs to upgrade to a high-rate network, the existing low-rate network can be reused, and only some incremental data are needed to be downloaded. We first hierarchically quantize the weights of a pre-trained deep neural network to enforce weight sharing. Next, we adaptively select the bits assigned to each layer given the total bit budget. After that, we retrain the network to fine-tune the quantized centroids. Experimental results show that our method can achieve scalable compression with graceful degradation in the performance.
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