@inproceedings{abab4d02a6e048d2b233689da0326917,
title = "PF-Training: Parameter Freezing for Efficient On-Device Training of CNN-based Object Detectors in Low-Resource Environments",
abstract = "There has been active research focusing on lightweight approaches for on-device CNN training. Convolutional neural network (CNN) training requires a substantial amount of computation and memory footprint, particularly when compared with inference. However, in the case of on-device training, the available resources are limited, making it particularly challenging to train CNNs on-device. This study proposes a lightweight algorithm for CNN training in low-resource environments using parameter freezing techniques. The proposed method reduces the training load by employing a batch size of one and mitigates the computational overhead by using normalization freezing and modified weight optimization techniques. Furthermore, we propose a simple algorithm based on weight distribution to select the layers for freezing, thereby enabling efficient training. The proposed method is applied to Tiny-YOLOv3, demonstrating 52.10\% computation reduction, 55.79\% memory footprint reduction, and 21.95\% accuracy improvement compared to the fully trained fine-tuned model.",
keywords = "model compression, object detection, on-device training, parameter freezing, transfer learning",
author = "Dayoung Chun and Lee, \{Hyuk Jae\} and Hyun Kim",
note = "Publisher Copyright: {\textcopyright} 2024 IEEE.; 6th IEEE International Conference on AI Circuits and Systems, AICAS 2024 ; Conference date: 22-04-2024 Through 25-04-2024",
year = "2024",
doi = "10.1109/AICAS59952.2024.10595928",
language = "English",
series = "2024 IEEE 6th International Conference on AI Circuits and Systems, AICAS 2024 - Proceedings",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "21--25",
booktitle = "2024 IEEE 6th International Conference on AI Circuits and Systems, AICAS 2024 - Proceedings",
}