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The automatic segmentation of residential solar panels based on satellite images: A cross learning driven U-Net method

机译:基于卫星图像的住宅太阳能电池板的自动分割:跨学习驱动的U-Net方法

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Segmenting small-scale residential solar panels (RSPs) based on satellite images is an emerging data science problem in the renewable energy field. In this paper, we develop a cross learning driven U-Net (CrossNets) method and its extension, adaptive CrossNets, to automatically segment RSPs in satellite images. Proposed methods employ a group of generic U-Nets as a community and target to enhance the RSP segmentation performance. First, parameters of each generic U-Net in the community of CrossNets are initialized individually via the initialization with transfer learning and the classical initialization methods. Next, a novel training mechanism, cross learning, is developed to serve as a constraint for better optimizing CrossNets. Based on cross learning, each generic U-Net in the community first individually updates parameters at every epoch and next learns parameters from the best individual at specific epochs. Cross learning relieves the reliance of generic U-Nets on a careful initialization and better optimizes U-Nets. In testing, the result of the best performed generic U-Net in the community is selected as the final segmentation result of CrossNets. Adaptive CrossNets, a variant of CrossNets, is developed by applying an additional threshold to reduce the possibility of over-learning caused by cross learning. Satellite images collected from one city in U.S. are utilized to validate the performance of proposed methods. These images cover a large area of 135 km(2) with 2794 RSPs. Compared with two generic U-Nets based benchmarks, our method can enhance the overall segmentation IoU by around 34% and 1.5%. Moreover, the segmentation robustness is improved from 1.191e-2 and 1.286e-4 to 2.481e-5. In addition, two new image datasets collected from other two cities in U.S. are applied to further examine the applicability of proposed methods. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于卫星图像分割小规模的太阳能电池板(RSP)是可再生能源领域的新兴数据科学问题。在本文中,我们开发了一个交叉学习驱动的U-Net(Crossnets)方法及其扩展,自适应交叉网络,在卫星图像中自动分割RSP。提出的方法雇用一组通用U-Net作为社区和目标,以提高RSP分割性能。首先,通过使用传输学习和经典初始化方法的初始化单独地初始化交叉节社区中的每个通用U-Net的参数。接下来,开发了一种新颖的培训机制,交叉学习,作为更好地优化交叉口的约束。基于交叉学习,社区中的每个通用U-Net首先在每个时代单独更新参数,然后在特定时期的最佳个人中获取参数。交叉学习缓解了通用U-Nets对仔细初始化并更好地优化U-Net的依赖。在测试中,将选择社区中最佳执行的通用U-Net的结果作为交叉线的最终分段结果。通过应用额外的阈值来开发自适应交叉网络,通过应用额外的阈值来减少交叉学习造成的过度学习的可能性。从U.S的一个城市收集的卫星图像用于验证所提出的方法的性能。这些图像覆盖大面积135公里(2),具有2794辆RSP。与基于两个通用U-Nets的基准相比,我们的方法可以提高整体分段IOU约为34%和1.5%。此外,分割稳健性从1.191E-2和1.286E-4到2.481E-5改善。此外,两个新的图像数据集从美国的其他两个城市收集,以进一步检查所提出的方法的适用性。 (c)2020 Elsevier B.V.保留所有权利。

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