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Robust methods of unsupervised clustering to discover new planktonic species in-situ

机译:无监督聚类的强大方法,以探索原位的新浮游品种

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Plankton species are of vital importance to the marine food chain. They are susceptible to minor changes in their environment, which can lead to rapid and devastating changes in the global ecosystem. Thus, monitoring plankton species and their population dispersion is crucial to understanding the dynamics of their community abundance as well as their consumers in higher trophic levels. Technological advancements of systems providing high-resolution imaging augmented by powerful computing devices made it possible to infer the distribution from sampling millions of planktonic images at low cost. Yet, this requires an extensive and time consuming manual labeling effort. The process of training to distinguish different species on manually labeled data is called supervised learning. The objective of this paper is to find new algorithms capable of minimizing the training supervision and assisting in discovering unseen classes. We explore the use of unsupervised classes of models for in-situ classification and identification of planktonic images. The aim is to embed those models into existing robotic imaging platforms to enhance the classification ability and to allow the discovery of new classes without any prior knowledge or exhaustive labeling effort. This work compares different models and shows their abilities to learn essential data structures over the National Science Bowl planktonic dataset.
机译:浮游生物物种对海洋食物链至关重要。它们易于对其环境的轻微变化影响,这可能导致全球生态系统的迅速和毁灭性的变化。因此,监测浮游生物物种及其人口分散至关重要,以了解其社区丰富的动态以及他们在更高的营养水平中的消费者。提供高分辨率成像的系统的技术进步使得强大的计算设备增强,使得可以以低成本从数百万浮游图像进行采样的分布。然而,这需要广泛耗时的手动标签努力。在手动标记数据上区分不同物种的培训过程称为受监督学习。本文的目的是寻找新的算法,能够最大限度地减少培训监督和协助发现看不见的课程。我们探讨了无监督类模型,以便原位分类和浮游图像的识别。目的是将这些模型嵌入现有的机器人成像平台,以提高分类能力,并允许在没有任何先前知识或详尽的标签工作的情况下发现新课程。这项工作比较了不同的模型,并显示了他们在国家科学碗浮游数据集上学习基本数据结构的能力。

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