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首页> 外文期刊>Journal of the Royal Society of New Zealand >Computer vision in aquaculture: a case study of juvenile fish counting
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Computer vision in aquaculture: a case study of juvenile fish counting

机译:水产养殖中的计算机视觉:幼鱼计数的案例研究

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In aquaculture breeding or production programmes, counting juvenile fish represents a considerable cost in terms of the human hours needed. In this study, we explored the use of two state-of-the-art machine learning architectures (Single Shot Detection, hereafter SSD and Faster Regions with convolutional neural networks, hereafter Faster R-CNN) to augment a manual image-based juvenile fish counting method for the Australasian snapper (Chrysophrys auratus) bred at The New Zealand Institute for Plant and Food Research Limited. We tested model accuracy after tuning for confidence thresholds and non-maximal suppression overlap parameters, and implementing a bias correction using a Poisson regression model. Validation of image data showed that after tuning, bias-corrected SSD and Faster R-CNN models had mean absolute percent errors (MAPE) of less than 10, with SSD having MAPE of less than 5. Comparison of the results with those from manual counts showed that, while manual counts are slightly more accurate (MAPE = 1.56), the machine learning methods allow for more rapid assessment of counts and thus facilitating a higher throughput. This work represents a first step for deploying machine learning applications to an existing real-life aquaculture scenario and provides a useful starting point for further developments, such as real-time counting of fish or collecting additional phenotypic data from the source images.
机译:在水产养殖育种或生产计划中,就所需工时而言,计算幼鱼数量是一笔相当大的成本。在这项研究中,我们探索了使用两种最先进的机器学习架构(Single Shot Detection,以下简称SSD和具有卷积神经网络的Faster Regions,以下简称Faster R-CNN)来增强基于图像的澳大利亚鲷鱼(Chrysophrys auratus)的手动幼鱼计数方法,该方法由新西兰植物和食品研究所有限公司培育。在调整置信度阈值和非最大抑制重叠参数并使用泊松回归模型实施偏差校正后,我们测试了模型的准确性。对图像数据的验证表明,经过调整后,偏差校正的 SSD 和 Faster R-CNN 模型的平均绝对百分比误差 (MAPE) 小于 10%,SSD 的 MAPE 小于 5%。将结果与手动计数的结果进行比较表明,虽然手动计数稍微准确一些(MAPE = 1.56),但机器学习方法可以更快速地评估计数,从而促进更高的吞吐量。这项工作代表了将机器学习应用程序部署到现有现实生活中的水产养殖场景的第一步,并为进一步的发展提供了一个有用的起点,例如实时计算鱼类或从源图像中收集额外的表型数据。

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