A deep learning model for estimating body weight of live pacific white shrimp in a clay pond shrimp aquaculture

Nitthita Chirdchoo , Suvimol Mukviboonchai , Weerasak Cheunta
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引用次数: 0

Abstract

This paper presents a novel approach to address the essential challenge of accurately determining the total weight of shrimp within aquaculture ponds. Precise weight estimation is crucial in mitigating issues of overfeeding and underfeeding, thus enhancing efficiency and productivity in shrimp farming. The proposed system leverages image processing techniques to detect individual live shrimp and extract pertinent features for weight estimation within a clay pond environment. Specifically, an automated feed tray captures images of live shrimp, which are then processed using a combination of Detectron2, PyTorch, and CUDA (Compute Unified Device Architecture) for individual shrimp detection. Essential features such as area, perimeter, width, length, and posture are extracted through image analysis, enabling accurate estimation of shrimp weight. An Artificial Neural Network (ANN) model, utilizing these features, accurately predicts shrimp weight with a coefficient of determination (R2) of 94.50% when incorporating all extracted features. Furthermore, our system integrates a user-friendly web application that empowers farmers to monitor shrimp weight trends, facilitating precision feeding strategies and effective farm management. This study contributes a low-cost solution using a deep learning model to estimate the weight of live Pacific white shrimp in clay ponds, enabling daily weight calculations, helping farmers optimize feed quantities, providing shrimp size distribution insights, and reducing the Feed Conversion Ratio (FCR) for greater profitability. The procedure for shrimp feature extraction is also provided, including the calculation of shrimp length and width, as well as shrimp posture classification.

用于估算泥塘对虾养殖中活太平洋南美白对虾体重的深度学习模型
本文提出了一种新方法,以解决准确测定水产养殖池塘中对虾总重量这一基本挑战。精确的重量估算对于减少过量喂食和喂食不足的问题至关重要,从而提高对虾养殖的效率和生产力。拟议的系统利用图像处理技术来检测单个活虾,并提取相关特征,以便在粘土池塘环境中估算重量。具体来说,自动喂食盘捕捉活虾图像,然后使用 Detectron2、PyTorch 和 CUDA(计算统一设备架构)组合进行处理,以检测单个虾。通过图像分析提取面积、周长、宽度、长度和姿态等基本特征,从而准确估算虾的重量。人工神经网络(ANN)模型利用这些特征准确预测了虾的重量,在包含所有提取特征的情况下,判定系数(R2)为 94.50%。此外,我们的系统还集成了一个用户友好型网络应用程序,使养殖户能够监控对虾体重趋势,从而促进精准喂养策略和有效的养殖管理。这项研究提供了一种低成本的解决方案,利用深度学习模型估算粘土池塘中活太平洋南美白对虾的重量,实现每日重量计算,帮助养殖户优化饲料量,提供对虾大小分布的深入了解,并降低饲料转化率(FCR)以获得更大的利润。此外,还提供了对虾特征提取程序,包括对虾长度和宽度的计算,以及对虾姿态分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.60
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