Over the last decade, toxic events along the Mediterranean coast associated with exceptional harmful blooms of the dinoflagellate OvMeter: an automated 3D-integrated opto-electronic system for <Emphasis Type='Italic'>Ostreopsis</Emphasis> cf. <Emphasis Type='Italic'>ovata</Emphasis> bloom monitoring
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OvMeter: an automated 3D-integrated opto-electronic system for Ostreopsis cf. ovata bloom monitoring

机译:OVMETER:用于<重点类型=“斜体”> Ostreopsis Cf.的自动化3D集成光电系统。 <强调类型=“斜体”> ovata 绽放监控

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Abstract Over the last decade, toxic events along the Mediterranean coast associated with exceptional harmful blooms of the dinoflagellate Ostreopsis cf. ovata have increased in frequency and distribution, causing not only the death of marine organisms and human health problems, but also economic loss on the tourism and aquaculture industries. In order to reduce the burden of routine algal counting, an innovative automated, low-cost, opto-electronic system called OvMeter was developed. It is able to speed up the monitoring process and therefore it enables early warning of incipient harmful algal blooms. An ad-hoc software tool provides automated cell recognition, counting and real-time calculation of the final algal concentration. The core of dinoflagellate recognition relies on a localization step which takes advantage of the synergistic exploitation of 2D bright-field and quantitative phase microscopy images, and a classification phase performed by a machine learning algorithm based on Boosted Trees approach. The architectural design of the OvMeter device is presented here, together with a performance evaluation on sea samples.]]>
机译: CF. <重点类型=“斜体”>卵巢在频率和分布中增加,不仅导致海洋生物和人类健康问题的死亡,而且还导致旅游和水产养殖产业的经济损失。为了减少常规藻类计数的负担,开发了一种良好的自动化,低成本,光电电子系统。它能够加快监控过程,因此它可以提高初期警告初期的有害藻类绽放。 Ad-hoc软件工具提供最终藻类浓度的自动细胞识别,计数和实时计算。 DinoFlagellate识别的核心依赖于本地化步骤,该定位步骤利用基于提升的树木方法的机器学习算法执行的2D亮场和定量相位显微镜图像的协同开发。这里介绍了OVMeter设备的建筑设计,以及海水上的性能评估。]>

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