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Image Compression and Plants Classification Using Machine Learning in Controlled-Environment Agriculture: Antarctic Station Use Case

机译:使用机器学习在控制环境农业中的图像压缩和植物分类:南极站用例

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In this article, we share our experience in the scope of controlled-environment agriculture automation in the Antarctic station greenhouse facility called EDEN ISS. For remote plant monitoring, control, and maintenance, we solve the problem of plant classification. Due to the inherent communication limitations between Antarctica and Europe, we first propose the image compression mechanism for the data collection. We show that we can compress the images, on average, 7.2 times for efficient transmission over the weak channel. Moreover, we prove that decompressed images can be further used for computer vision applications. Upon decompressing images, we apply machine learning for the classification task. We achieve 92.6% accuracy on an 18-classes unbalanced dataset. The proposed approach is promising for a number of agriculture related applications, including the plant classification, identification of plant diseases, and deviation of plant phenology.
机译:在本文中,我们分享了我们在南极站温室设施中的控制环境农业自动化范围的经验,称为Eden Iss。 对于远程工厂监控,控制和维护,我们解决了植物分类问题。 由于南极和欧洲之间的固有通信限制,我们首先提出了数据收集的图像压缩机制。 我们表明我们可以平均压缩图像7.2倍以高效传输弱通道。 此外,我们证明了解压缩的图像可以进一步用于计算机视觉应用。 在解压缩图像时,我们将机器学习应用于分类任务。 我们在18级不平衡数据集中达到92.6%的准确性。 拟议的方法是对许多农业相关申请的承诺,包括植物分类,植物疾病的鉴定和植物候选的偏差。

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