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Integrating camera imagery crowdsourcing and deep learning to improve high-frequency automated monitoring of snow at continental-to-global scales

机译:整合相机图像众包和深度学习以改善从大陆到全球范围的高频自动积雪监测

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摘要

Snow is important for local to global climate and surface hydrology, but spatial and temporal heterogeneity in the extent of snow cover make accurate, fine-scale mapping and monitoring of snow an enormous challenge. We took 184,453 daily near-surface images acquired by 133 automated cameras and processed them using crowdsourcing and deep learning to determine whether snow was present or absent in each image. We found that the crowdsourced data had an accuracy of 99.1% when compared with expert evaluation of the same imagery. We then used the image classification to train a deep convolutional neural network via transfer learning, with accuracies of 92% to 98%, depending on the image set and training method. The majority of neural network errors were due to snow that was present not being detected. We used the results of the neural networks to validate the presence or absence of snow inferred from the MODIS satellite sensor and obtained similar results to those from other validation studies. This method of using automated sensors, crowdsourcing, and deep learning in combination produced an accurate high temporal dataset of snow presence across a continent. It holds broad potential for real-time large-scale acquisition and processing of ecological and environmental data in support of monitoring, management, and research objectives.
机译:积雪对于局部到全球的气候和地表水文学很重要,但是积雪范围内的时空异质性使得精确,精细的积雪制图和监测成为巨大的挑战。我们拍摄了由133台自动照相机采集的每日184,453张近地表图像,并使用众包和深度学习对其进行了处理,以确定每幅图像中是否存在积雪。我们发现,与同一图像的专家评估相比,众包数据的准确性为99.1%。然后,我们使用图像分类通过传递学习来训练深度卷积神经网络,其准确度为92%到98%,具体取决于图像集和训练方法。大多数神经网络错误是由于未检测到积雪引起的。我们使用神经网络的结果来验证从MODIS卫星传感器推断出的积雪的存在与否,并获得与其他验证研究相似的结果。结合使用自动传感器,众包和深度学习的这种方法可以生成一个准确的高时空数据集,该数据集遍布整个大陆。它具有实时大规模采集和处理生态和环境数据的广泛潜力,以支持监视,管理和研究目标。

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