Back to Search Start Over

Multi-species identification and number counting of fish passing through fishway at hydropower stations with LigTraNet.

Authors :
Li, Jianyuan
Liu, Chunna
Wang, Luhai
Liu, Yi
Li, Rui
Lu, Xiaochun
Lu, Jia
Shen, Jian
Source :
Ecological Informatics; Sep2024, Vol. 82, pN.PAG-N.PAG, 1p
Publication Year :
2024

Abstract

Fishway monitoring can verify the effectiveness of the fishway, optimise the operation mode, and achieve scientific management of fishway operations. Traditional fishway monitoring approaches, hindered by their inefficiency and substantial disruption of fish, are ill-suited for long-term surveillance; thus, employing video monitoring coupled with object detection technology presents an alternative or complementary solution. However, challenges such as the constrained computational capacity of onsite equipment in fishways, complexities involved in model deployment, and sluggish pace of detection are significant hurdles. In this study, by utilising the YOLOv8n model as a benchmark, we engineered a cross-stage partial module with a single convolution (C1) module to replace the existing C2f module with the aim of enhancing performance. We replaced the conventional 2D convolutions in the bottleneck configuration with depthwise separable convolutions and integrated the SimAM module to extract the detailed characteristics of the fish species. By amalgamating LigObNet detection with the DeepSORT algorithm, we established LigTraNet, which is designed to enable precise tracking, identification, and counting of individual fish. The results showed that LigObNet exhibited the lowest complexity and fastest detection speed for underwater fish among similar object recognition and detection models. Compared with the benchmark YOLOv8n model, there were reductions of 8.9% in the network layers, 40.5% in the parameter count, 39.3% in the memory footprint, and 35.8% in the giga floating-point operations and a 38.1% improvement in the inference speed. LigTraNet achieved a total count accuracy rate of 91.8%, demonstrating superior species quantification capabilities over other models with minimal resource usage and rapid inference capabilities, thus offering enhanced practicality for deployment on devices in real-world engineering contexts. This represents a departure from traditional manual monitoring methods for assessing fishway effectiveness, revolutionising aquatic ecological monitoring tools and methodologies and fostering the collaborative advancement of water resource project operations and ecological conservation. • LigTraNet, capable of identifying fish species accurately and numbers efficiently. • C1 module and DWConv, simplifying LigObNet and ensuring its lightweight. • SimAM enables LigObNet concentrating on target with higher detection accuracy. • Deepsort algorithm, establishing an automated system for fish count. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15749541
Volume :
82
Database :
Supplemental Index
Journal :
Ecological Informatics
Publication Type :
Academic Journal
Accession number :
179322047
Full Text :
https://doi.org/10.1016/j.ecoinf.2024.102704