Since 2011, significant and atypical arrival of two species of surface dwelling algae, Sargassum natans and Sargassum Fluitans, have been detected in the Mexican Caribbean. This massive accumulation of algae has had a great environmental and economic impact. Therefore, for the government, ecologists, and local businesses, it is important to keep track of the amount of sargassum that arrives on the Caribbean coast. High-resolution satellite imagery is expensive or may be time delayed. Therefore, we propose to estimate the amount of sargassum based on ground-level smartphone photographs. From the computer vision perspective, the problem is quite difficult since no information about the 3D world is provided, in consequence, we have to model it as a classification problem, where a set of five labels define the amount. For this purpose, we have built a dataset with more than one thousand examples from public forums such as Facebook or Instagram and we have tested several state-of-the-art convolutional networks. As a result, the VGG network trained under fine-tuning showed the best performance. Even though the reached accuracy could be improved with more examples, the current prediction distribution is narrow, so the predictions are adequate for keeping a record and taking quick ecological actions.
翻译:自2011年以来,在墨西哥加勒比检测到两种地表居住藻类 -- -- Sargasum natans和Sargasum Fluitants -- -- 的到来数量巨大且异常。藻类的大规模积累产生了巨大的环境和经济影响。因此,对于政府、生态学家和当地企业来说,必须跟踪加勒比海岸上出现的沙沙母数量。高分辨率卫星图像昂贵或可能延迟时间。因此,我们提议根据地面智能手机照片估算沙沙沙司数量。从计算机的视角看,问题相当困难,因为没有提供关于3D世界的信息,因此,我们必须把它作为分类问题模型,在分类时有5个标签来界定数量。为此,我们用公共论坛(如Facebook或Instagram)的1 000多个实例建立了一个数据集,我们测试了几座最先进的革命网络。结果是,在微调下培训的VGGG网络显示最佳的绩效。尽管已实现的准确性可以用更多实例加以改进,但目前的生态预测分布是狭窄的。