SegCloud: a novel cloud image segmentation model using a deep convolutional neural network for ground-based all-sky-view camera observation
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Published:2020-04-17
Issue:4
Volume:13
Page:1953-1961
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Xie WanyiORCID, Liu DongORCID, Yang Ming, Chen Shaoqing, Wang Benge, Wang ZhenzhuORCID, Xia Yingwei, Liu Yong, Wang Yiren, Zhang Chaofan
Abstract
Abstract. Cloud detection and cloud properties have substantial
applications in weather forecast, signal attenuation analysis, and other
cloud-related fields. Cloud image segmentation is the fundamental and
important step in deriving cloud cover. However, traditional segmentation
methods rely on low-level visual features of clouds and often fail to
achieve satisfactory performance. Deep convolutional neural networks (CNNs)
can extract high-level feature information of objects and have achieved
remarkable success in many image segmentation fields. On this basis, a novel
deep CNN model named SegCloud is proposed and applied for accurate cloud
segmentation based on ground-based observation. Architecturally, SegCloud
possesses a symmetric encoder–decoder structure. The encoder network
combines low-level cloud features to form high-level, low-resolution cloud
feature maps, whereas the decoder network restores the obtained high-level
cloud feature maps to the same resolution of input images. The Softmax
classifier finally achieves pixel-wise classification and outputs
segmentation results. SegCloud has powerful cloud discrimination capability
and can automatically segment whole-sky images obtained by a ground-based
all-sky-view camera. The performance of SegCloud is validated by extensive
experiments, which show that SegCloud is effective and accurate for
ground-based cloud segmentation and achieves better results than traditional
methods do. The accuracy and practicability of SegCloud are further proven
by applying it to cloud cover estimation.
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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