Volume 4 - Issue S1

Automated detection of aquatic animals using deep learning techniques

Aakansha Soy Sutar Manisha Balkrishna

Abstract

Deep learning-based approaches have arisen as promising devices for mechanizing the recognition and characterization of oceanic creatures, offering critical progressions in marine biology, fisheries the board, and natural checking. This paper gives a far-reaching survey of the difficulties and potential open doors related with executing profound learning techniques in sea-going science. Picture grouping undertakings have seen an ascent with the presentation of profound learning strategies. In this paper, we have proposed a crossover Deep learning system that is utilized for highlight extraction and profound learning strategy for characterization. Both the proposed structures are tried on various dataset. Our trial results show that our system gives improved results than the majority of the customary as well as existing profound learning procedures. The vital advances of DL calculations applied to the visual acknowledgment and location of oceanic creatures are summed up, including datasets, calculations and execution. Besides, the difficulties are summarized and characterized in the item acknowledgment and identification space for oceanic creatures.

Keywords: Deep learning, Underwater fish species, Aquatic animals

PlumX

Date

December 2024

Page Number

1-6
International Journal of Aquatic Research and Environmental Studies