Open Journal of Applied Sciences

Volume 13, Issue 7 (July 2023)

ISSN Print: 2165-3917   ISSN Online: 2165-3925

Google-based Impact Factor: 1  Citations  

Underwater Inhomogeneous Light Field Based on Improved Convolutional Neural Net Fish Image Recognition

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DOI: 10.4236/ojapps.2023.137086    209 Downloads   762 Views  Citations

ABSTRACT

In this paper, artificial intelligence image recognition technology is used to improve the recognition rate of individual domestic fish and reduce the recognition time, aiming at the problem that it is difficult to easily observe the species and growth of domestic fish in the underwater non-uniform light field environment. First, starting from the image data collected by polarizing imaging technology, this paper uses subpixel convolution reconstruction to enhance the image, uses image translation and fill technology to build the family fish database, builds the Adam-Dropout-CNN (A-D-CNN) network model, and its convolution kernel size is 3 × 3. The maximum pooling was used for downsampling, and the discarding operation was added after the full connection layer to avoid the phenomenon of network overfitting. The adaptive motion estimation algorithm was used to solve the gradient sparse problem. The experiment shows that the recognition rate of A-D-CNN is 96.97% when the model is trained under the domestic fish image database, which solves the problem of low recognition rate and slow recognition speed of domestic fish in non-uniform light field.

Share and Cite:

Liu, K. , Wang, S. , Wu, Y. and Zhang, W. (2023) Underwater Inhomogeneous Light Field Based on Improved Convolutional Neural Net Fish Image Recognition. Open Journal of Applied Sciences, 13, 1079-1095. doi: 10.4236/ojapps.2023.137086.

Cited by

[1] Underwater image processing based on CNN applications: A review
Proceedings of the Cognitive Models and Artificial …, 2024

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