基于深度卷积神经网络的正射影超分辨率

V. Berezovsky, Yunfeng Bai, Ivan Sharshov, R. Aleshko, K. Shoshina, I. Vasendina
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引用次数: 0

摘要

利用无人机、飞行器或卫星采集的高分辨率影像是野外林区分析的研究热点。在实践中,HR图像可用于少数区域,而对于其余区域,最大密度在1 px/m左右变化。HR图像重建是计算机视觉中一个众所周知的问题。近年来,深度学习算法在图像处理方面取得了巨大的成功,因此我们将其引入到正射影图像处理领域。同时,我们注意到正射影一般有不同大小的彩色块。考虑到这一特点,我们没有直接应用经典算法,而是做了一些改进。实验表明,该方法的效果与经典算法相当,但在预处理阶段显著节省了时间。提出了一种森林区域分析方法,包括图像分割和树种分类。给出了数值计算结果。
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Orthoimage Super-Resolution via Deep Convolutional Neural Networks
Using high resolution (HR) images collected from UAV, aerial craft or satellites is a research hotspot in the field forest areas analyzing. In practice, HR images are available for a small number of regions, while for the rest, the maximum density various around 1 px/m. HR image reconstruction is a well-known problem in computer vision. Recently, deep learning algorithms have achieved great success in image processing, so we have introduced them into the field of processing orthoimages. At the same time, we noticed that orthoimages generally have colorful blocks of different sizes. Taking into account this feature, we did not apply the classical algorithms directly, but made some improvements. Experiments show that the effect of proposed method is equivalent to the effect of classical algorithms, however, at the preprocessing stage, it significantly saves time. An approach to the forest areas analyzing, including image segmentation and the tree spices classification is proposed. The results of numerical calculations are presented.
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