Yann Fabel, B. Nouri, S. Wilbert, N. Blum, Rudolph Triebel, M. Hasenbalg, Pascal Kuhn, L. Zarzalejo, R. Pitz-Paal
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Deep neural networks have proven to be very effective and robust for segmentation tasks, however they require large training datasets to learn complex visual features. In this work, we present a self-supervised learning approach to exploit much more data than in purely supervised training and thus increase the model's performance. In the first step, we use about 300,000 ASIs in two different pretext tasks for pretraining. One of them pursues an image reconstruction approach. The other one is based on the DeepCluster model, an iterative procedure of clustering and classifying the neural network output. In the second step, our model is fine-tuned on a small labeled dataset of 770 ASIs, of which 616 are used for training and 154 for validation. For each of them, a ground truth mask was created that classifies each pixel into clear sky, low-layer, mid-layer or high-layer cloud. To analyze the effectiveness of self-supervised pretraining, we compare our approach to randomly initialized and pretrained ImageNet weights, using the same training and validation sets. Achieving 85.8 % pixel-accuracy on average, our best self-supervised model outperforms the conventional approaches of random (78.3 %) and pretrained ImageNet initialization (82.1 %). The benefits become even more evident when regarding precision, recall and intersection over union (IoU) on the respective cloud classes, where the improvement is between 5 and 20 % points. Furthermore, we compare the performance of our best model on binary segmentation with a clear-sky library (CSL) from the literature. 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引用次数: 22
摘要
摘要地面全天空图像的语义分割可以提供不同云类型的高分辨率云覆盖信息,适用于气象、气候学和太阳能相关应用。由于云的形状和外观是多变的,而且云的类型之间有很高的相似性,因此很难进行明确的分类。因此,大多数最先进的方法侧重于区分有云像素和无云像素,而不考虑云的类型。另一方面,云的分类通常是在图像级别上单独确定的,忽略了云的位置,只考虑流行云的类型。深度神经网络已经被证明是非常有效和鲁棒的分割任务,但他们需要大量的训练数据集来学习复杂的视觉特征。在这项工作中,我们提出了一种自监督学习方法,可以利用比纯监督训练更多的数据,从而提高模型的性能。在第一步中,我们在两个不同的借口任务中使用了大约30万个ASIs进行预训练。其中一个研究的是图像重建方法。另一种是基于DeepCluster模型,这是一种对神经网络输出进行聚类和分类的迭代过程。在第二步中,我们的模型在770个ASIs的小标记数据集上进行微调,其中616个用于训练,154个用于验证。对于每一个图像,我们都创建了一个ground truth mask,将每个像素划分为晴空、低层、中层或高层云。为了分析自监督预训练的有效性,我们将我们的方法与随机初始化和预训练的ImageNet权重进行比较,使用相同的训练集和验证集。我们最好的自监督模型平均达到85.8%的像素精度,优于随机(78.3%)和预训练ImageNet初始化(82.1%)的传统方法。当考虑到各自云类上的精度、召回率和交集(IoU)时,这些好处变得更加明显,其中的改进在5%到20%之间。此外,我们将我们的最佳模型与文献中的晴空库(CSL)在二值分割上的性能进行了比较。我们的模型比CSL高出7%以上,达到95%的像素精度。
Applying self-supervised learning for semantic cloud segmentation
of all-sky images
Abstract. Semantic segmentation of ground-based all-sky images (ASIs) can provide high-resolution cloud coverage information of distinct cloud types, applicable for meteorology, climatology and solar energy-related applications. Since the shape and appearance of clouds is variable and there is high similarity between cloud types, a clear classification is difficult. Therefore, most state-of-the-art methods focus on the distinction between cloudy- and cloudfree-pixels, without taking into account the cloud type. On the other hand, cloud classification is typically determined separately on image-level, neglecting the cloud's position and only considering the prevailing cloud type. Deep neural networks have proven to be very effective and robust for segmentation tasks, however they require large training datasets to learn complex visual features. In this work, we present a self-supervised learning approach to exploit much more data than in purely supervised training and thus increase the model's performance. In the first step, we use about 300,000 ASIs in two different pretext tasks for pretraining. One of them pursues an image reconstruction approach. The other one is based on the DeepCluster model, an iterative procedure of clustering and classifying the neural network output. In the second step, our model is fine-tuned on a small labeled dataset of 770 ASIs, of which 616 are used for training and 154 for validation. For each of them, a ground truth mask was created that classifies each pixel into clear sky, low-layer, mid-layer or high-layer cloud. To analyze the effectiveness of self-supervised pretraining, we compare our approach to randomly initialized and pretrained ImageNet weights, using the same training and validation sets. Achieving 85.8 % pixel-accuracy on average, our best self-supervised model outperforms the conventional approaches of random (78.3 %) and pretrained ImageNet initialization (82.1 %). The benefits become even more evident when regarding precision, recall and intersection over union (IoU) on the respective cloud classes, where the improvement is between 5 and 20 % points. Furthermore, we compare the performance of our best model on binary segmentation with a clear-sky library (CSL) from the literature. Our model outperforms the CSL by over 7 % points, reaching a pixel-accuracy of 95 %.