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Improving YOLOv11 Performance in Underwater Fish Detection via Evolutionary Tuner and Selective Kernel Attention

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Hua-Ching Chen1 Hsuan-Ming Feng2

Publication Details

Journal: International Journal of Engineering Innovations & Technology

ISSN: Coming Soon

Volume/Issue: Volume 1, Issue 1

Year: 2025

Published: December 16, 2025

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Article Overview

Authors: Hua-Ching Chen1, Hsuan-Ming Feng2,

DOI: -

Publication: Volume 1, Issue 1 (2025)

Journal: International Journal of Engineering Innovations & Technology

Keywords: YOLOv11, underwater fish detection, evolutionary tuner, selective kernel attention, object detection, marine life detection, deep learning, computer vision, fish recognition, underwater imaging, AI in fisheries, real-time detection, neural networks, adaptive models, image classification, marine biodiversity monitoring, smart aquaculture, AI fish tracking, YOLO optimization, attention mechanisms

Article Information

Received: 12/05/2025

Accepted: 12/11/2025

Published: December 16, 2025

DOI: -

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