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Fish length prediction from acoustic descriptors of Anchovy (Engraulis anchoita) schools

机译:根据length鱼(Engraulis anchoita)学校的声学描述符预测鱼的长度

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In a fishery assessment context, Artificial Neural Networks (ANNs), among other techniques, have been intensively tested for the identification of fish species and pursuing the automatic classification of the schools, based on descriptors extracted from digital echosounder recordings. Prediction of year-class strength is also a critical challenge for fisheries scientists and managers. In this study we extend the use of automatic classification methods, to the prediction of fish length, based on the acoustic descriptors of the fish schools. Anchovy (Engraulis anchoita) is the most abundant pelagic fish species in the SW Atlantic. We used data from a comprehensive anchovy surveys data base, comprising 9 acoustic surveys carried out between 1995 and 2008, for training and testing ANN s of different architecture. In this experience, by using only acoustic descriptors of anchovy schools ensembles, together with concurrent information on the fish size distribution obtained by trawling, we were able to satisfactory predict schematics of the ensembles age structure. Correct classification rates up to 70% were obtained.
机译:在渔业评估背景下,除其他技术中,人工神经网络(ANNS)已经集中测试了用于识别鱼类并追求学校的自动分类,基于从数字回声记录中提取的描述符。对渔业科学家和经理的预测也是渔业科学家和经理的危急挑战。在这项研究中,我们基于鱼类学校的声学描述符来扩展使用自动分类方法,以预测鱼长度。 Anchovy(ingrialis anchoita)是SW大西洋中最丰富的木质鱼种。我们使用来自全面的凤尾鱼调查数据库的数据,该数据库包括995年至2008年间的9个声学调查,用于培训和测试不同架构的ANN S。在这种经验中,通过仅使用凤尾鱼学校集合的声学描述符,以及关于通过拖拉所获得的鱼鳞分布的并发信息,我们能够令人满意的预测节奏年龄结构的原理图。获得高达70%的正确分类率。

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