English

RRR-Net: Reusing, Reducing, and Recycling a Deep Backbone Network

Machine Learning 2023-10-03 v1

Abstract

It has become mainstream in computer vision and other machine learning domains to reuse backbone networks pre-trained on large datasets as preprocessors. Typically, the last layer is replaced by a shallow learning machine of sorts; the newly-added classification head and (optionally) deeper layers are fine-tuned on a new task. Due to its strong performance and simplicity, a common pre-trained backbone network is ResNet152.However, ResNet152 is relatively large and induces inference latency. In many cases, a compact and efficient backbone with similar performance would be preferable over a larger, slower one. This paper investigates techniques to reuse a pre-trained backbone with the objective of creating a smaller and faster model. Starting from a large ResNet152 backbone pre-trained on ImageNet, we first reduce it from 51 blocks to 5 blocks, reducing its number of parameters and FLOPs by more than 6 times, without significant performance degradation. Then, we split the model after 3 blocks into several branches, while preserving the same number of parameters and FLOPs, to create an ensemble of sub-networks to improve performance. Our experiments on a large benchmark of 4040 image classification datasets from various domains suggest that our techniques match the performance (if not better) of ``classical backbone fine-tuning'' while achieving a smaller model size and faster inference speed.

Keywords

Cite

@article{arxiv.2310.01157,
  title  = {RRR-Net: Reusing, Reducing, and Recycling a Deep Backbone Network},
  author = {Haozhe Sun and Isabelle Guyon and Felix Mohr and Hedi Tabia},
  journal= {arXiv preprint arXiv:2310.01157},
  year   = {2023}
}
R2 v1 2026-06-28T12:38:14.168Z