基于人工神经网络的对虾饲料类型分类决策支持

Rex Paolo C. Gamara, Pocholo James M. Loresco, Romano Q. Neyra
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引用次数: 5

摘要

对虾养殖是水产养殖业中一项高利润的业务。通过实施更好的管理措施,结合最佳对虾饲料管理和生长监测,可以实现养殖盈利。人工测量大种群虾的生长是一项繁琐而困难的任务。摄食不足导致生长速度下降,摄食过量导致环境污染。因此,诸如计算机视觉之类的自动化、连续和非侵入性的方法正被越来越多地采用。然而,现有的基于视觉的生长参数测量研究尚未纳入对虾饲料管理。本文提出了一种基于人工神经网络的饲料类型分类决策支持系统,该系统利用图像处理技术得到的饲料面积、长度和重量对饲料类型进行分类。神经网络采用尺度共轭梯度反向传播方法进行训练。该决策支持系统在饲料类型分类方面显示出良好的效果。
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Artificial Neural Network-Based Decision Support for Shrimp Feed Type Classification
Shrimp farming is a highly profitable business in the aquaculture industry. The farming profitability can be achieved by the implementation of better management practices in conjunction with optimal shrimp feed management and growth monitoring. Manual measurement for shrimp growth on a large population is a tedious and difficult task. Underfeeding results to lower growth rate, and overfeeding results to environmental pollution. Automated, continuous, and non-invasive methods therefore such as computer vision are being increasingly employed. However, existing researches of vision-based measurement of growth parameters are not yet incorporated to shrimp feed management. This paper presented an Artificial Neural Network-based decision support system of classifying feed type whether starter, grower or finisher using area, length and weight derived from image processing techniques. The neural network was trained using scaled conjugate gradient back propagation. The decision support system exhibited promising results in feed type classification.
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