Dataset Preview
The full dataset viewer is not available (click to read why). Only showing a preview of the rows.
Job manager crashed while running this job (missing heartbeats).
Error code: JobManagerCrashedError
Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
image
image |
|---|
End of preview.
FishDet-M: A Unified Large-Scale Benchmark for Robust Fish Detection
Overview
FishDet-M is the largest unified benchmark dataset for fish detection in diverse underwater environments, designed to advance ecological monitoring, aquaculture automation, and marine robotics.
Key Features
- ๐ Dataset Scale: 105,556 images with 296,885 annotated fish instances
- ๐ Diverse Environments: Marine, brackish, aquarium, and occluded scenes
- ๐ฏ Unified Format: COCO-style annotations with bounding boxes
- ๐ค 28 Models Evaluated: Including YOLOv8-v12, DETR, R-CNN variants, and more
- ๐ง CLIP-Based Selection: Automatic model selection using vision-language alignment
Dataset Composition
FishDet-M integrates 13 public datasets spanning:
- Coral reefs and open water
- Aquaculture tanks and ponds
- Clear to highly turbid conditions
- Single fish to dense schools (1-256 instances per image)
- Image resolutions: 78ร53 to 4608ร3456 pixels
Performance Highlights
Top Performing Models:
- YOLO12x: 0.491 mAP (best overall accuracy)
- YOLO11l: 0.484 mAP with excellent efficiency
- YOLOv8n: 251 FPS for real-time applications
CLIP-Guided Selector:
- Dynamic model selection: 0.444 mAP at 80 FPS
- Zero-shot adaptation to diverse scenes
Key Contributions
- Unified Benchmark: First large-scale dataset harmonizing diverse underwater fish detection datasets
- Comprehensive Evaluation: Systematic comparison of 28 state-of-the-art detection models
- Adaptive Selection: CLIP-based framework for context-aware model deployment
- Deployment Guidelines: Performance insights across occlusion, scale, and visibility conditions
Applications
- ๐ Ecological monitoring and biodiversity assessment
- ๐ฃ Aquaculture automation and fish counting
- ๐ค Underwater robotics and autonomous vehicles
- ๐ฌ Marine conservation research
Citation
@article{abujabal2025fishdetm,
title={FishDet-M: A Unified Large-Scale Benchmark for Robust Fish Detection and CLIP-Guided Model Selection in Diverse Aquatic Visual Domains},
author={Abujabal, Muayad and Saad Saoud, Lyes and Hussain, Irfan},
journal={IEEE Transactions on Image Processing},
year={2025}
}
Resources
- Project Website: https://lyessaadsaoud.github.io/FishDet-M/
- Dataset & Code: Available through the project page
- Pretrained Models: All 28 evaluated models with checkpoints
- Interactive GUI: Desktop application for model comparison
Acknowledgments
This work was supported by the Khalifa University Center for Autonomous Robotic Systems (KUCARS) under Awards RC1-2018-KUCARS and CIRA Awards 8474000419 and 8434000534.
Khalifa University, Abu Dhabi, UAE
- Downloads last month
- 27