Analyzing Fisheries Market, Shrimp Farming & Identifying Fish Species using Image Processing

Sachini Sumeera, Nipun Pesala, Maleesha Thilani, A. Gamage, P. Bandara
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Abstract

The fisheries industry is vital to the Sri Lankan economy because it provides a living for more than 2.5 million coastal communities and meets more than half of the country’s animal protein needs. Today, the fishery community in Sri Lanka is facing several grant problems. Among them, not getting a decent fish price for their harvesting, the inability to identify diseases in shrimp cages in the early stages, and the inability to identify fish species by observing their external appearance. This research developed a prototype mobile application “Malu Malu” to avoid the above-mentioned problems. It facilitates to the prediction of market fish prices, identifying shrimp diseases in their early stages, and identifying fish species by observing their external appearance. The proposed predictive models of the “Malu Malu” contains three main models developed using inseption V3 Convolutional Neural Network (CNN) model for image classification and Linear Regression is used for creating a model for predictions. The experimental results of these models showed above 85% of accuracy.
利用图像处理技术分析渔业市场、对虾养殖及鱼类品种识别
渔业对斯里兰卡经济至关重要,因为它为250多万沿海社区提供了生计,并满足了该国一半以上的动物蛋白需求。今天,斯里兰卡的渔业社区正面临着几个赠款问题。其中包括,没有获得一个体面的鱼价,无法在早期阶段识别虾笼中的疾病,以及无法通过观察其外观来识别鱼类。为了避免上述问题,本研究开发了一个原型移动应用“Malu Malu”。它有助于预测市场鱼类价格,早期识别虾类疾病,并通过观察鱼种的外观来识别鱼种。提出的“Malu Malu”预测模型主要包含三个模型,使用inption V3开发卷积神经网络(CNN)模型用于图像分类,线性回归用于创建模型进行预测。实验结果表明,这些模型的准确率在85%以上。
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