At present, fish farming still uses manual identification methods. With the rapid development of deep learning, the application of computer vision in agriculture and farming to achieve agricultural intelligence has become a current research hotspot. We explored the use of facial recognition in fish. We collected and produced a fish identification dataset with 3412 images and a fish object detection dataset with 2320 images. A rotating box is proposed to detect fish, which avoids the problem where the traditional object detection produces a large number of redundant regions and affects the recognition accuracy. A self-SE module and a fish face recognition network (FFRNet) are proposed to implement the fish face identification task. The experiments proved that our model has an accuracy rate of over 90% and an FPS of 200.
CITATION STYLE
Li, D., Su, H., Jiang, K., Liu, D., & Duan, X. (2022). Fish Face Identification Based on Rotated Object Detection: Dataset and Exploration. Fishes, 7(5). https://doi.org/10.3390/fishes7050219
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