English

Lightweight Compression of Intermediate Neural Network Features for Collaborative Intelligence

Machine Learning 2021-05-18 v1 Image and Video Processing

Abstract

In collaborative intelligence applications, part of a deep neural network (DNN) is deployed on a lightweight device such as a mobile phone or edge device, and the remaining portion of the DNN is processed where more computing resources are available, such as in the cloud. This paper presents a novel lightweight compression technique designed specifically to quantize and compress the features output by the intermediate layer of a split DNN, without requiring any retraining of the network weights. Mathematical models for estimating the clipping and quantization error of ReLU and leaky-ReLU activations at this intermediate layer are developed and used to compute optimal clipping ranges for coarse quantization. We also present a modified entropy-constrained design algorithm for quantizing clipped activations. When applied to popular object-detection and classification DNNs, we were able to compress the 32-bit floating point intermediate activations down to 0.6 to 0.8 bits, while keeping the loss in accuracy to less than 1%. When compared to HEVC, we found that the lightweight codec consistently provided better inference accuracy, by up to 1.3%. The performance and simplicity of this lightweight compression technique makes it an attractive option for coding an intermediate layer of a split neural network for edge/cloud applications.

Keywords

Cite

@article{arxiv.2105.07102,
  title  = {Lightweight Compression of Intermediate Neural Network Features for Collaborative Intelligence},
  author = {Robert A. Cohen and Hyomin Choi and Ivan V. Bajić},
  journal= {arXiv preprint arXiv:2105.07102},
  year   = {2021}
}

Comments

Accepted for publication in IEEE Open Journal of Circuits and Systems

R2 v1 2026-06-24T02:07:59.732Z