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Implementation of Adaboost for the detection of the toxic response behaviour of zebrafish (Danio Rerio)

机译:实施Adaboost用于检测斑马鱼的毒性反应行为(Danio Rerio)

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The movement behaviour of zebrafish (Danio rerio) schools was observed in response to treatment with copper at a 24 h half-lethal concentration. The behavioural characteristic parameters, which were continuously recorded into a SQL (Structured Query Language) Server database by a digital image processing system both before and after the treatment, had significant changes. Subsequently, the Adaboost algorithm was implemented to solve the data vector classification problem in normal and abnormal water. Furthermore, to evaluate the accuracy and timeliness of the classifiers, Adaboost was compared with a back-propagation neural network (BPNN) and support vector machine (SVM). The results clearly demonstrated that the prediction accuracy of the Gentle Adaboost and Real Adaboost algorithms were over 93%, which was better than the Modest Adaboost, the BPNN and the SVM. In addition, the time requirement was also acceptable. In conclusion, Adaboost is a useful computational method for the classification of water quality.
机译:观察到斑马鱼(斑马鱼)学校的运动行为是对铜在24 h半致死浓度下的处理的响应。在处理之前和之后,由数字图像处理系统将行为特征参数连续记录到SQL(结构化查询语言)服务器数据库中的行为特征参数发生了重大变化。随后,实施了Adaboost算法以解决正常和异常水中的数据矢量分类问题。此外,为了评估分类器的准确性和及时性,将Adaboost与反向传播神经网络(BPNN)和支持向量机(SVM)进行了比较。结果清楚地表明,Gentle Adaboost和Real Adaboost算法的预测精度超过93%,优于Modest Adaboost,BPNN和SVM。另外,时间要求也是可以接受的。总之,Adaboost是一种用于水质分类的有用计算方法。

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