Thammasanya Thunchanok, Patiam Sakarat, Rodcharoen Eknarin, Chotikarn Ponlachart
Faculty of Environmental Management, Prince of Songkla University, Hat Yai, Thailand.
Coastal Oceanography and Climate Change Research Center, Prince of Songkla University, Hat Yai, Thailand.
Sci Rep. 2024 Feb 12;14(1):3529. doi: 10.1038/s41598-024-53251-5.
Hazardous compounds from microplastics in coastal and marine environments are adsorbed by live organisms, affecting human and marine life. It takes time, money and effort to study the distribution and type of microplastics in the environment, using appropriate expensive equipment in a laboratory. However, deep learning can assist in identifying and quantifying microplastics from an image. This paper presents a novel microplastic classification method that combines the benefits of UV light with deep learning. The Faster-RCNN model with a ResNet-50-FPN backbone was implemented to detect and identify microplastics. Microplastic images from the field taken under UV light were used to train and validate the model. This classification model achieved a high precision of 85.5-87.8%, and the mAP scores were 33.9% on an internal test set and 35.7% on an external test set. This classification approach provides a high-accuracy, low-cost, and time-effective automated identification and counting of microplastics.
沿海和海洋环境中微塑料产生的有害化合物会被生物吸附,从而影响人类和海洋生物。在实验室中使用适当的昂贵设备来研究环境中微塑料的分布和类型,需要耗费时间、资金和精力。然而,深度学习可以帮助从图像中识别和量化微塑料。本文提出了一种将紫外线的优势与深度学习相结合的新型微塑料分类方法。采用带有ResNet-50-FPN主干的Faster-RCNN模型来检测和识别微塑料。利用在紫外线下拍摄的现场微塑料图像对模型进行训练和验证。该分类模型实现了85.5 - 87.8%的高精度,在内部测试集上的平均精度均值(mAP)分数为33.9%,在外部测试集上为35.7%。这种分类方法为微塑料提供了一种高精度、低成本且高效的自动识别和计数方法。