C. M. Breen, W. Currier, C. Vuyovich, Z. Miao, L. Prugh
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引用次数: 0
摘要
雪杆延时摄影是指将已知高度的雪杆安装在相机前,在一个雪季中反复拍摄,这样可以相对快速、经济地建立一个庞大的站点网络。然而,目前从雪柱中提取雪深的方法通常依赖于耗时的人工照片处理。通过将计算机视觉算法与雪柱摄影相结合,我们提出了一种使用关键点检测模型来自动观测整个站点网络的雪高的方法。在科罗拉多州大梅萨的 20 个雪柱位置(n = 9722 张图片),我们的模型成功预测了雪柱的顶部和底部,平均绝对误差 (MAE) 为 1.30 厘米。为了评估模型的通用性,我们在华盛顿州的 12 个地点(n = 1,770 幅图像)测试了该模型。当使用华盛顿州的子集图像对科罗拉多州训练有素的模型进行微调时,该模型预测雪深的 MAE 为 4.0 厘米。如果在训练过程中同时使用两个数据集,则可获得最佳性能,科罗拉多州图像的 MAE 为 2.05 厘米,华盛顿州图像的 MAE 为 1.14 厘米。我们证明,尤其是在使用特定地点的数据子集进行训练时,关键点检测模型可以加速雪极自动化。该算法使水文界离通用雪极检测模型更近了一步,我们呼吁未来的模型能整合更多地点的延时图像。
Snow Depth Extraction From Time‐Lapse Imagery Using a Keypoint Deep Learning Model
Snow pole time‐lapse photography, in which a snow pole of a known height is installed in front of a camera and photographed repeatedly over the course of a snow season, allows a large network of sites to be established relatively quickly and affordably. However, current approaches for extracting snow depth from snow poles typically relies on time intensive manual photo processing. By integrating computer vision algorithms with snow pole photography, we present a method that uses a keypoint detection model to automatically observe snow height across a network of sites. At 20 snow pole locations from Grand Mesa, CO (n = 9,722 images), our model successfully predicts the top and bottom of the pole with a mean absolute error (MAE) of 1.30 cm. To assess model generalizability, we tested the model on 12 sites in Washington State (n = 1,770 images). When the Colorado trained model was fine‐tuned using a subset of Washington images, the model predicted snow depth with a MAE of 4.0 cm. Best performance was achieved when both data sets were included during training, with a MAE of 2.05 cm for Colorado images and a MAE of 1.14 cm for Washington images. We demonstrate that, especially when trained using a subset of site‐specific data, a keypoint detection model can accelerate snow pole automation. This algorithm brings the hydrology community one step closer to a generalized snow pole detection model, and we call for a future model that integrates across time‐lapse images from additional locations.
期刊介绍:
ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.