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Comparison of relative abundance indices calculated from two methods of generating video count data

机译:比较两种生成视频计数数据的方法计算出的相对丰度指数

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The use of baited remote underwater video to remotely observe fish and generate indices of relative abundance has steadily gained acceptance as a fisheries management tool particularly as survey time series have matured. Because 'capture' for this gear is visually derived, fish can possibly be counted multiple times and therefore different methods of estimating site abundances have been developed. We compared the performance of two video abundance estimation techniques, MaxN and MeanCount, by generating relative indices of abundance using a delta lognormal model. We demonstrated high correspondence between standardized indices produced through the years analyzed independent of the species evaluated, indicating there was little change in the information content between indices. Despite the agreement between the indices, estimates for proportion positive and coefficient of variation (CV) showed a general reduction in precision when using the MeanCount method for all species analyzed. Systematic underestimation of proportion positives and high CV values generated using MeanCount is problematic for the use of that abundance estimation method. Individual-based modeling results confirmed that MeanCount is linearly related to true abundance, while MaxN showed a power relationship. However, the MaxN estimate became linear as the area observed was increased in the model from 25% to 100%, which suggests that syncing cameras and generating counts over the entire observed area would eliminate the asymptotic relationship and simplify the use of MaxN estimators. Better understanding of catchability for optical type gears would enhance understanding of the relationship between the generated index and true population abundance, and supply assessment scientist with a clearer understanding of how to incorporate these types of survey data into assessments. Published by Elsevier B.V.
机译:使用诱饵的远程水下视频来远程观察鱼类并产生相对丰度的指数已逐渐被人们接受为渔业管理工具,尤其是随着调查时间序列的成熟。由于该渔具的“捕获”是从视觉上得出的,因此可以对鱼类进行多次计数,因此已经开发出了估算场地丰度的不同方法。通过使用增量对数正态模型生成相对丰度索引,我们比较了两种视频丰度估算技术(MaxN和MeanCount)的性能。我们证明了经过分析的年份所产生的标准化指标之间的高度对应性,而与所评估的物种无关,这表明指标之间信息内容的变化很小。尽管两个指标之间存在一致性,但对所有被分析的物种使用MeanCount方法时,对正比例和变异系数(CV)的估计显示出精度的总体下降。使用MeanCount生成的比例正数和高CV值的系统性低估对于使用该丰度估计方法是有问题的。基于个体的建模结果证实,MeanCount与真实丰度线性相关,而MaxN显示幂次关系。但是,随着模型中观察区域的增加(从25%增加到100%),MaxN估计值变为线性,这表明同步摄像机并在整个观察区域上生成计数将消除渐近关系并简化MaxN估计器的使用。更好地了解光学齿轮的可捕捉性将增强对生成的指数与真实种群数量之间关系的理解,并使供应评估科学家对如何将这些类型的调查数据纳入评估更加清楚。由Elsevier B.V.发布

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