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Fast cloud image segmentation with superpixel analysis based convolutional networks

机译:基于超像素分析的卷积网络快速云图像分割

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Due to the various noises, the cloud image segmentation becomes a big challenge for atmosphere prediction. CNN is capable of learning discriminative features from complex data, but this may be quite time-consuming in pixel-level segmentation problems. In this paper we propose superpixel analysis based CNN (SP-CNN) for high efficient cloud image segmentation. SP-CNN employs image over-segmentation of superpixels as basic entities to preserve local consistency. SP-CNN takes the image patches centered at representative pixels in every superpixel as input, and all superpixels are classified as cloud or non-cloud part by voting of the representative pixels. It greatly reduces the computational burden on CNN learning. In order to avoid the ambiguity from superpixel boundaries, SP-CNN selects the representative pixels uniformly from the eroded superpixels. Experimental analysis demonstrates that SP-CNN guarantees both the effectiveness and efficiency in cloud segmentation.
机译:由于各种噪声,云图像分割成为大气预测的一大挑战。 CNN能够从复杂数据中学习区分特征,但是在像素级分割问题中这可能会非常耗时。在本文中,我们提出了基于CNN的超像素分析(SP-CNN)进行高效的云图像分割。 SP-CNN使用超像素的图像过度分割作为基本实体,以保持局部一致性。 SP-CNN将以每个超像素中代表像素为中心的图像块作为输入,并且通过对代表像素进行投票将所有超像素分类为云或非云部分。它大大减轻了CNN学习的计算负担。为了避免来自超像素边界的歧义,SP-CNN从受侵蚀的超像素中均匀选择代表像素。实验分析表明,SP-CNN保证了云分割的有效性和效率。

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