English

EagleEye: Fast Sub-net Evaluation for Efficient Neural Network Pruning

Computer Vision and Pattern Recognition 2020-08-06 v2

Abstract

Finding out the computational redundant part of a trained Deep Neural Network (DNN) is the key question that pruning algorithms target on. Many algorithms try to predict model performance of the pruned sub-nets by introducing various evaluation methods. But they are either inaccurate or very complicated for general application. In this work, we present a pruning method called EagleEye, in which a simple yet efficient evaluation component based on adaptive batch normalization is applied to unveil a strong correlation between different pruned DNN structures and their final settled accuracy. This strong correlation allows us to fast spot the pruned candidates with highest potential accuracy without actually fine-tuning them. This module is also general to plug-in and improve some existing pruning algorithms. EagleEye achieves better pruning performance than all of the studied pruning algorithms in our experiments. Concretely, to prune MobileNet V1 and ResNet-50, EagleEye outperforms all compared methods by up to 3.8%. Even in the more challenging experiments of pruning the compact model of MobileNet V1, EagleEye achieves the highest accuracy of 70.9% with an overall 50% operations (FLOPs) pruned. All accuracy results are Top-1 ImageNet classification accuracy. Source code and models are accessible to open-source community https://github.com/anonymous47823493/EagleEye .

Keywords

Cite

@article{arxiv.2007.02491,
  title  = {EagleEye: Fast Sub-net Evaluation for Efficient Neural Network Pruning},
  author = {Bailin Li and Bowen Wu and Jiang Su and Guangrun Wang and Liang Lin},
  journal= {arXiv preprint arXiv:2007.02491},
  year   = {2020}
}

Comments

Accepted in ECCV 2020(Oral). Codes are available on https://github.com/anonymous47823493/EagleEye

R2 v1 2026-06-23T16:52:19.370Z