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Identifying floating plastic marine debris using a deep learning approach

机译:使用深层学习方法识别浮动塑料海洋碎片

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Estimating the volume of macro-plastics which dot the world's oceans is one of the most pressing environmental concerns of our time. Prevailing methods for determining the amount of floating plastic debris, usually conducted manually, are time demanding and rather limited in coverage. With the aid of deep learning, herein, we propose a fast, scalable, and potentially cost-effective method for automatically identifying floating marine plastics. When trained on three categories of plastic marine litter, that is, bottles, buckets, and straws, the classifier was able to successfully recognize the preceding floating objects at a success rate of approximate to 86%. Apparently, the high level of accuracy and efficiency of the developed machine learning tool constitutes a leap towards unraveling the true scale of floating plastics.
机译:估算世界海洋的宏观塑料的数量是我们最受欢迎的环境问题之一。 用于确定浮动塑料碎片量的普遍方法,通常是手动进行的,是覆盖范围的时间要求和相当有限。 借助深度学习,这里,我们提出了一种快速,可扩展,潜在的经济有效的方法,用于自动识别浮动海洋塑料。 当培训三类塑料海事垃圾时,即瓶子,铲斗和吸管,分类器能够成功地将前面的浮动物体成功识别到86%的成功率。 显然,发达机器学习工具的高级准确性和效率构成了揭开浮动塑料的真正规模的跃升。

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