An Analysis of Training Artificial Intelligence Techniques into Eco Sounder Machine to Identify Fish DOI

R. Richards Hadlee,

Amit Gudadhe,

Joginder Kumar

et al.

Published: Nov. 27, 2023

The acoustic backscatter coefficient values obtained from Echosounders provides important information about the presence of fishes in water. There are several developments underwater technology such as single beam echo sounder, multi frequency side scan radar. But there challenges associated with this interpretation echograms generated these devices time consuming, is requirement technical experts to understand and detection fish species still a challenge etc. recent advancement field integration signal Artificial Intelligence algorithms. Machine Learning, Deep Fuzzy Logic some advanced algorithms which used for automatic classification that aids fishermen identify locations fishes. Hence, review article focusses on role advance sea can help saving their by precisely locating A trained AI program locate areas scene recognize feature patterns. Fish recognition categorization 3D photos have both been successfully accomplished using Echo sounder object framework.

Language: Английский

Deep Learning and Artificial Intelligence in Sustainability: A Review of SDGs, Renewable Energy, and Environmental Health DOI Open Access
Zhencheng Fan, Zheng Yan,

Shiping Wen

et al.

Sustainability, Journal Year: 2023, Volume and Issue: 15(18), P. 13493 - 13493

Published: Sept. 8, 2023

Artificial intelligence (AI) and deep learning (DL) have shown tremendous potential in driving sustainability across various sectors. This paper reviews recent advancements AI DL explores their applications achieving sustainable development goals (SDGs), renewable energy, environmental health, smart building energy management. has the to contribute 134 of 169 targets all SDGs, but rapid these technologies necessitates comprehensive regulatory oversight ensure transparency, safety, ethical standards. In sector, been effectively utilized optimizing management, fault detection, power grid stability. They also demonstrated promise enhancing waste management predictive analysis photovoltaic plants. field integration facilitated complex spatial data, improving exposure modeling disease prediction. However, challenges such as explainability transparency models, scalability high dimensionality with next-generation wireless networks, ethics privacy concerns need be addressed. Future research should focus on developing scalable algorithms for processing large datasets, exploring addressing considerations. Additionally, efficiency models is crucial use technologies. By fostering responsible innovative use, can significantly a more future.

Language: Английский

Citations

112

Role of artificial intelligence (AI) in fish growth and health status monitoring: a review on sustainable aquaculture DOI
Arghya Mandal, Apurba Ratan Ghosh

Aquaculture International, Journal Year: 2023, Volume and Issue: 32(3), P. 2791 - 2820

Published: Oct. 10, 2023

Language: Английский

Citations

50

Does Artificial Intelligence (AI) enhance green economy efficiency? The role of green finance, trade openness, and R&D investment DOI Creative Commons

Qiang Wang,

Tingting Sun,

Rongrong Li

et al.

Humanities and Social Sciences Communications, Journal Year: 2025, Volume and Issue: 12(1)

Published: Jan. 3, 2025

Abstract Marine fisheries constitute a crucial component of global green development, where artificial intelligence (AI) plays an essential role in enhancing economic efficiency associated with marine fisheries. This study utilizes panel data from 11 coastal provinces and municipalities China 2009 to 2020, employing the entropy method super-efficiency EBM model calculate AI index Based on these calculations, we utilize fixed effects models, moderation effect threshold models examine impact The reveals that: (i) From has significantly improved overall, while shown fluctuating trend, substantial regional disparities. (ii) enhances (iii) Green finance, trade openness, R&D investment act as moderating variables, accelerating development further improving (iv) varies across different intervals investment. These findings are for understanding advancing informatization strategy hold significant implications sustainable

Language: Английский

Citations

17

AI-driven aquaculture: A review of technological innovations and their sustainable impacts DOI Creative Commons
Hang Yang, Feng Qi, Shibin Xia

et al.

Artificial Intelligence in Agriculture, Journal Year: 2025, Volume and Issue: unknown

Published: Feb. 1, 2025

Language: Английский

Citations

1

FishTrack: Multi-object tracking method for fish using spatiotemporal information fusion DOI
Yiran Liu, Beibei Li,

Xinhui Zhou

et al.

Expert Systems with Applications, Journal Year: 2023, Volume and Issue: 238, P. 122194 - 122194

Published: Oct. 20, 2023

Language: Английский

Citations

19

Fish feeding intensity assessment method using deep learning-based analysis of feeding splashes DOI
Yao Wu, Xiaochan Wang, Yinyan Shi

et al.

Computers and Electronics in Agriculture, Journal Year: 2024, Volume and Issue: 221, P. 108995 - 108995

Published: May 9, 2024

Language: Английский

Citations

6

Multi-classification deep neural networks for identification of fish species using camera captured images DOI Creative Commons
Hassaan Malik, Ahmad Naeem, Shahzad Hassan

et al.

PLoS ONE, Journal Year: 2023, Volume and Issue: 18(4), P. e0284992 - e0284992

Published: April 26, 2023

Regular monitoring of the number various fish species in a variety habitats is essential for marine conservation efforts and biology research. To address shortcomings existing manual underwater video sampling methods, plethora computer-based techniques are proposed. However, there no perfect approach automated identification categorizing species. This primarily due to difficulties inherent capturing videos, such as ambient changes luminance, camouflage, dynamic environments, watercolor, poor resolution, shape variation moving fish, tiny differences between certain study has proposed novel Fish Detection Network (FD_Net) detection nine different types using camera-captured image that based on improved YOLOv7 algorithm by exchanging Darknet53 MobileNetv3 depthwise separable convolution 3 x filter size augmented feature extraction network bottleneck attention module (BNAM). The mean average precision (mAP) 14.29% higher than it was initial version YOLOv7. utilized method features an DenseNet-169, loss function Arcface Loss. Widening receptive field improving capability achieved incorporating dilated into dense block, removing max-pooling layer from trunk, BNAM block DenseNet-169 neural network. results several experiments comparisons ablation demonstrate our FD_Net mAP YOLOv3, YOLOv3-TL, YOLOv3-BL, YOLOv4, YOLOv5, Faster-RCNN, most recent model, more accurate target tasks complex environments.

Language: Английский

Citations

16

Application of artificial intelligence in fish information identification: a scientometric perspective DOI Creative Commons

Liguo Ou,

Linlin Lu,

Qian Wei-guo

et al.

Frontiers in Marine Science, Journal Year: 2025, Volume and Issue: 12

Published: April 15, 2025

In the context of growing demand for sustainable development and conservation fish stocks, artificial intelligence (AI) technologies are essential supporting scientific stock management. Artificial technology provides an effective solution intelligent recognition information. This study used bibliometric analysis to review a sample 719 articles from WoSCC (Web Science Core Collection) database 2014-2024. The results revealed significant increase in number publications 2014-2024, with mainly China, USA (the United States) other developed countries. top three impactful journals Ecological Informatics, Computers Electronics Agriculture ICES Journal Marine Science. most frequent keyword co-occurrence was deep learning, best clustering effect computer vision. findings indicate that this evaluation holistic visualization research frontier AI information identification, our underscore global importance identification highlight publication trends, hotspots, future directions area. conclusion, provide valuable insights into emerging frontiers AI-based identification.

Language: Английский

Citations

0

Role of Artificial Intelligence in Fish Disease Modeling and Prognosis DOI
Soumya Prasad Panda, Dhananjay Soren, P.K. Malakar

et al.

Published: Jan. 1, 2025

Language: Английский

Citations

0

Classification of set-net fish catch volumes in Iwate Prefecture, Japan using machine learning with water temperature and current distribution images at migration depth DOI
Takero Yoshida,

Kenta Sugino,

Haruka Nishikawa

et al.

Regional Studies in Marine Science, Journal Year: 2024, Volume and Issue: 73, P. 103480 - 103480

Published: March 19, 2024

Language: Английский

Citations

3