Effect of Light-Emitting Grid Panel on Indoor Aquaculture for Measuring Fish Growth
Author:
Huynh Nguyen Ngoc1ORCID, Jun Myoungjae1ORCID, Jeong Hieyong1ORCID
Affiliation:
1. Department of Artificial Intelligence Convergence, Chonnam National University, Gwangju 61186, Republic of Korea
Abstract
This study is related to Smart Aqua Farm, which combines artificial intelligence (AI) and Internet of things (IoT) technology. This study aimed to monitor fish growth in indoor aquaculture while automatically measuring the average size and area in real time. Automatic fish size measurement technology is one of the essential elements for unmanned aquaculture. Under the condition of labor shortage, operators have much fatigue because they use a primitive method that samples the size and weight of fish just before fish shipment and measures them directly by humans. When this kind of process is automated, the operator’s fatigue can be significantly reduced. Above all, after measuring the fish growth, predicting the final fish shipment date is possible by estimating how much feed and time are required until the fish becomes the desired size. In this study, a video camera and a developed light-emitting grid panel were installed in indoor aquaculture to acquire images of fish, and the size measurement of a mock-up fish was implemented using the proposed method.
Funder
Korea Institute of Marine Science & Technology Promotion
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