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Applications of deep convolutional neural networks to predict length, circumference, and weight from mostly dewatered images of fish

机译:深度卷积神经网络预测大多数脱水图像的长度,周长和重量的应用

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Simple biometric data of fish aid fishery management tasks such as monitoring the structure of fish populations and regulating recreational harvest. While these data are foundational to fishery research and management, the collection of length and weight data through physical handling of the fish is challenging as it is time consuming for personnel and can be stressful for the fish. Recent advances in imaging technology and machine learning now offer alternatives for capturing biometric data. To investigate the potential of deep convolutional neural networks to predict biometric data, several regressors were trained and evaluated on data stemming from the FishL? Recognition System and manual measurements of length, girth, and weight. The dataset consisted of 694 fish from 22 different species common to Laurentian Great Lakes. Even with such a diverse dataset and variety of presentations by the fish, the regressors proved to be robust and achieved competitive mean percent errors in the range of 5.5 to 7.6% for length and girth on an evaluation dataset. Potential applications of this work could increase the efficiency and accuracy of routine survey work by fishery professionals and provide a means for longer‐term automated collection of fish biometric data.
机译:诸如监测鱼群结构和调节休闲收获的鱼援助渔业管理任务的简单生物识别数据。虽然这些数据是渔业研究和管理的基础,但是通过鱼类物理处理的长度和重量数据的集合是挑战,因为它对于人员来说是耗时的,并且可能对鱼类压力有压力。成像技术和机器学习的最新进展现在为捕获生物识别数据提供替代方案。为了调查深度卷积神经网络来预测生物识别数据的潜力,训练了几个回归训练并对从鱼类的数据进行了评估?识别系统和手动测量长度,周长和重量。数据集由来自劳伦特伟大的湖泊共同的22种不同物种的694条鱼。即使有这样一个不同的数据集和鱼类的各种演示,所以已被证明是强大的,并且在评估数据集上的长度和周长的范围为5.5%至7.6%的竞争平均百分比。这项工作的潜在应用可以提高渔业专业人员的日常调查工作的效率和准确性,并为渔业生物识别数据的长期自动收集提供一种手段。

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