基于背光成像的浮游生物观测系统在生态调查中的应用

Application of Plankton Observation System Based on Backlight Imaging in Ecological Survey

  • 摘要: 浮游生物作为海洋生态系统的关键组成部分,其种群及数量变化不仅直接影响海洋生物多样性和食物链结构,还作为评估海洋生态环境健康状况的关键指标。然而,传统的浮游生物研究调查方法通常耗时费力,难以实现原位、连续、长期、高时空分辨率的监测。为了克服这一挑战,本文应用基于背光成像的自容式海洋原位浮游生物观测系统进行实地采样,系统可自动采集海洋原位浮游生物图像,并通过图像预处理方法及基于ResNet50的卷积神经网络模型(Convolutional Neural Network, CNN)的运用,实现对海洋原位浮游生物图像切片的分类。为验证系统的有效性,2023年8—9月在环海南岛海洋生态调查中,应用该仪器实现了对海南岛东南沿岸浮游生物的原位采集及后期的统计分析。经验证,针对本次调查采集的海洋原位浮游生物图像切片组成的数据集,神经网络的分类准确率达到了98.2%。统计得到,在此次生态调查中,海南岛东部及南部近岸海域浮游动物的丰度范围为94.04~4 325.46 ind/m3,平均为1 472.91 ind/m3;浮游植物丰度范围为82.71~18 704.70 ind/m3,平均为2 398.86 ind/m3

     

    Abstract: Plankton are fundamental components of marine ecosystems, underpinning biodiversity and forming the base of the marine food web. Fluctuations in plankton populations not only regulate biodiversity and trophic dynamics but also serve as sensitive indicators of marine environmental conditions. Conventional survey methods, which rely on manual sampling and microscopic examination, are time-consuming, labor-intensive, and inadequate for continuous, high-resolution in-situ monitoring. To address these limitations, we developed and deployed a compact in-situ plankton observation system based on backlight imaging. The system integrates automated image acquisition, onboard preprocessing, and a convolutional neural network (CNN) classifier based on ResNet50, enabling real-time plankton identification directly in the marine environment. The system was deployed during an ecological survey conducted along the southeastern coast of Hainan Island between August and September 2023. It successfully captured and classified in-situ plankton images, achieving a classification accuracy of 98.2% on the collected dataset. Statistical analysis revealed pronounced spatial variations: zooplankton abundance ranged from 94.04 to 4325.46 ind/m3 (mean: 1 472.91 ind/m3), whereas phytoplankton abundance ranged from 82.71 to 18 704.70 ind/m3 (mean: 2 398.86 ind/m3). These findings demonstrate that the developed system provides accurate plankton classification and reliable in-situ abundance estimates. By enabling automated, continuous, and high-resolution monitoring, the system constitutes a valuable tool for marine ecological research and environmental assessment. It also offers significant potential for supporting biodiversity assessments, tracking plankton community dynamics, and providing early warning of ecosystem change.

     

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