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一种用于贻贝养殖浮标检测的新型人工智能方法。

A new artificial intelligent approach to buoy detection for mussel farming.

作者信息

Bi Ying, Xue Bing, Briscoe Dana, Vennell Ross, Zhang Mengjie

机构信息

School of Engineering and Computer Science, Victoria University of Wellington, Wellington, New Zealand.

Coastal and Freshwater Group, Cawthron Institute, Nelson, New Zealand.

出版信息

J R Soc N Z. 2022 Jun 26;53(1):27-51. doi: 10.1080/03036758.2022.2090966. eCollection 2023.

Abstract

Aquaculture is an important industry in New Zealand (NZ). Mussel farmers often manually check the state of the buoys that are required to support the crop, which is labour-intensive. Artificial intelligence (AI) can provide automatic and intelligent solutions to many problems but has seldom been applied to mussel farming. In this paper, a new AI-based approach is developed to automatically detect buoys from mussel farm images taken from a farm in the South Island of NZ. The overall approach consists of four steps, i.e. data collection and preprocessing, image segmentation, keypoint detection and feature extraction, and classification. A convolutional neural network (CNN) method is applied to perform image segmentation. A new genetic programming (GP) method with a new representation, a new function set and a new terminal set is developed to automatically evolve descriptors for extracting features from keypoints. The new approach is applied to seven subsets and one full dataset containing images of buoys over different backgrounds and compared to three baseline methods. The new approach achieves better performance than the compared methods. Further analysis of the parameters and the evolved solutions provides more insights into the performance of the new approach to buoy detection.

摘要

水产养殖是新西兰的一项重要产业。贻贝养殖户经常手动检查支撑养殖作物所需浮标的状态,这是一项劳动密集型工作。人工智能(AI)可以为许多问题提供自动且智能的解决方案,但很少应用于贻贝养殖。本文开发了一种基于人工智能的新方法,用于从新西兰南岛一个养殖场拍摄的贻贝养殖场图像中自动检测浮标。总体方法包括四个步骤,即数据收集与预处理、图像分割、关键点检测与特征提取以及分类。应用卷积神经网络(CNN)方法进行图像分割。开发了一种具有新表示、新函数集和新终端集的新遗传编程(GP)方法,以自动演化描述符,从关键点中提取特征。将新方法应用于七个子集和一个包含不同背景下浮标图像的完整数据集,并与三种基线方法进行比较。新方法比所比较的方法具有更好的性能。对参数和演化后的解决方案进行进一步分析,能更深入地了解新浮标检测方法的性能。

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