A New Dataset, Poisson GAN and AquaNet for Underwater Object Grabbing
Chongwei Liu, Zhihui Wang, Shijie Wang, Tao Tang, Yulong Tao, Caifei, Yang, Haojie Li, Xing Liu, and Xin Fan

TL;DR
This paper introduces a comprehensive underwater object dataset, a novel GAN for data augmentation, and an efficient detection network to improve underwater object recognition, especially for small and minority classes.
Contribution
It presents the first 4K HD open-sea farm dataset, a Poisson-blending GAN with dual restriction loss, and an efficient detector AquaNet with multi-scale features for small object detection.
Findings
Poisson GAN effectively generates realistic minority class objects.
AquaNet achieves high accuracy with fewer parameters.
The combined approach improves underwater object detection performance.
Abstract
To boost the object grabbing capability of underwater robots for open-sea farming, we propose a new dataset (UDD) consisting of three categories (seacucumber, seaurchin, and scallop) with 2,227 images. To the best of our knowledge, it is the first 4K HD dataset collected in a real open-sea farm. We also propose a novel Poisson-blending Generative Adversarial Network (Poisson GAN) and an efficient object detection network (AquaNet) to address two common issues within related datasets: the class-imbalance problem and the problem of mass small object, respectively. Specifically, Poisson GAN combines Poisson blending into its generator and employs a new loss called Dual Restriction loss (DR loss), which supervises both implicit space features and image-level features during training to generate more realistic images. By utilizing Poisson GAN, objects of minority class like seacucumber or…
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Taxonomy
TopicsAdvanced Neural Network Applications · Image Enhancement Techniques · Water Quality Monitoring Technologies
MethodsConvolution · Dogecoin Customer Service Number +1-833-534-1729
