4.7 Article

A lightweight network for portable fry counting devices

期刊

APPLIED SOFT COMPUTING
卷 136, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.asoc.2023.110140

关键词

Fry counting; Lightweight Convolutional Neural Network; Channel attention mechanism; Density map regression; Computer vision

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This study proposes a fry counting method called MSENet, which improves counting accuracy and solves the issue of fry aggregation by designing a lightweight network and utilizing the Squeeze-and-Excitation block to enhance features.
Estimating the number of fries plays a critical role in the maintenance of fish breeding, transportation, and the preservation of marine resources in aquaculture. Generally speaking, statistics are recorded manually by fishers and government units. Manual recording is time-consuming and increases the workload of fishers. Compared with traditional physical shunt devices, visual-based algorithms have benefits such as non-restriction of labors, minimal equipment installation, and maintenance costs. However, these methods generally come with massive calculations and model parameters, or poor abilities of aggregation handles and counting precision. This paper proposes a fry counting method named MSENet for portable fry counting devices. Firstly, the lightweight network is designed with simpler parameters (Params: 139.46 kB) for portable embedding. The visualized single-channel fry density maps are predicted by feeding the original images and the number of fries is calculated through integration. Then, the Squeeze-and-Excitation block is utilized to strengthen the features of weighty channels. The model training is refined by hyperparameter studies, the shortened preparation stage enhances the portability. What is more, a fry counting dataset NCAUF and an extra set NCAUF-EX are built for verifications of network generalization. The results demonstrate that the lightweight MSENet outperforms in fry counting with higher precision and competently solves the issue of fry aggregation (MAE: 3.33). The source code and pre-trained models are available at: https://github.com/vranlee/MSENet. (c) 2023 Elsevier B.V. All rights reserved.

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