NEMar 23, 2018

SqueezeNext: Hardware-Aware Neural Network Design

arXiv:1803.10615v2325 citations
Originality Incremental advance
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This work addresses the deployment of neural networks on resource-constrained embedded systems, offering significant improvements in efficiency without accuracy loss.

The paper tackled the problem of high memory and power consumption in neural networks for embedded systems by introducing SqueezeNext, which matches AlexNet's accuracy on ImageNet with 112× fewer parameters and achieves VGG-19 accuracy with 31× fewer parameters, while also being faster and more energy-efficient than prior models.

One of the main barriers for deploying neural networks on embedded systems has been large memory and power consumption of existing neural networks. In this work, we introduce SqueezeNext, a new family of neural network architectures whose design was guided by considering previous architectures such as SqueezeNet, as well as by simulation results on a neural network accelerator. This new network is able to match AlexNet's accuracy on the ImageNet benchmark with $112\times$ fewer parameters, and one of its deeper variants is able to achieve VGG-19 accuracy with only 4.4 Million parameters, ($31\times$ smaller than VGG-19). SqueezeNext also achieves better top-5 classification accuracy with $1.3\times$ fewer parameters as compared to MobileNet, but avoids using depthwise-separable convolutions that are inefficient on some mobile processor platforms. This wide range of accuracy gives the user the ability to make speed-accuracy tradeoffs, depending on the available resources on the target hardware. Using hardware simulation results for power and inference speed on an embedded system has guided us to design variations of the baseline model that are $2.59\times$/$8.26\times$ faster and $2.25\times$/$7.5\times$ more energy efficient as compared to SqueezeNet/AlexNet without any accuracy degradation.

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