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Poriferal Vision: Classifying Benthic Sponge Spicules to Assess Historical Impacts of Marine Climate Change

机译:外围愿景:分类底部海绵痉挛,评估海洋气候变化的历史影响

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Sponges and corals are ecologically important members of the marine community. Climate change, while harmful to corals, has historically been favorable to sponges. Sponge population dynamics are studied by analyzing core samples of marine sediment. To date this analysis has been performed by microscopic visual inspection of core cross sections to distinguish spicules (the rigid silica components of sponge skeletons) from the residue of other silica-using organisms. Since this analysis is both slow and error prone, complete analysis of multiple cross sections is impossible. FlowCam® technology can produce tens of thousands of microphotographs of individual core sample particles in a few minutes. Individual photos must then be classified in silico. We have developed a Deep Learning classifier, called Poriferal Vision, that distinguishes sponge spicules from non-spicule particles. Small training sets were enhanced using image augmentation to achieve accuracy of at least 95%. A Support Vector Machine trained on the same data achieved accuracy of at most 86%. Our results demonstrate the efficacy of Deep Learning for analyzing core samples, and show that our classifier will be an effective tool for large-scale analysis.
机译:海绵和珊瑚生态海洋社区的重要成员。气候变化,而有害珊瑚,历来有利于海绵。海绵种群动态是由海洋沉积物的分析岩芯样品的研究。迄今为止这种分析已经由芯横切片的显微目视检查进行区分其它使用二氧化硅 - 生物体的骨针残余物(海绵的骨架的刚性的二氧化硅组分)。由于这种分析是慢速和容易出错,多个横截面的完整的分析是不可能的。 FlowCam®技术可以制作单独的芯样颗粒的显微照片数万几分钟。单张照片必须然后在硅片进行分类。我们已经建立了深厚的学习分类,称为Poriferal视觉,区分海绵非毛刺颗粒骨针。使用图像增强,以实现至少95%的准确度得到了加强小训练集。支持向量机上训练实现最多86%的准确率相同的数据。我们的研究结果表明深学习的疗效分析岩芯样品,并表明我们的分类将是大规模分析的有效工具。

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