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Validation methods for plankton image classification systems

机译:Plankton图像分类系统的验证方法

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摘要

In recent decades, the automatic study and analysis of plankton communities using imaging techniques has advanced significantly. The effectiveness of these automated systems appears to have improved, reaching acceptable levels of accuracy. However, plankton ecologists often find that classification systems do not work as well as expected when applied to new samples. This paper proposes a methodology to assess the efficacy of learned models which takes into account the fact that the data distribution (the plankton composition of the sample) can vary between the model building phase and the production phase. As opposed to most validation methods that consider the individual organism as the unit of validation, our approach uses a validation-by-sample, which is more appropriate when the objective is to estimate the abundance of different morphological groups. We argue that, in these cases, the base unit to correctly estimate the error is the sample, not the individual. Thus, model assessment processes require groups of samples with sufficient variability in order to provide precise error estimates.
机译:近几十年来,使用成像技术的浮游生物社区的自动研究和分析显着提出。这些自动化系统的有效性似乎有所改善,达到可接受的准确性水平。然而,Plankton生态学家经常发现分类系统在适用于新样本时不起作用。本文提出了一种评估学习模型的功效的方法,这考虑了数据分布(样品浮游生物组成)可以在模型建设阶段和生产阶段之间变化的事实。与大多数验证方法相比,认为个体有机体作为验证单位,我们的方法使用逐个验证,当目标是估计不同形态组的丰富时,更合适。我们认为,在这些情况下,基本单元要正确估计错误是样本,而不是个人。因此,模型评估过程需要具有足够可变性的样本组,以便提供精确的误差估计。

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