Semantic segmentation method based on super-resolution

被引:1
作者
Zheng D. [1 ]
Fu Y. [1 ]
Zhang H. [1 ]
Gao M. [1 ]
Yu J. [1 ]
机构
[1] College of Computer Science and Engineering, Shandong University of Science and Technology, Qingdao
来源
Yu, Jianzhi (yujianzhi@163.com) | 1600年 / Totem Publishers Ltd卷 / 16期
关键词
Generative; Remote sensing image; Semantic segmentation; Single image super-resolution;
D O I
10.23940/ijpe.20.05.p4.711719
中图分类号
学科分类号
摘要
Convolutional neural network is an important method to solve most computer vision problems nowadays. Although increasing the computing cost and the scale of model will make most tasks achieve satisfactory results, the difficulty of increasing the computing cost and high-quality data also limit the increase of model scale. In this paper, when using neural network to segment the remote sensing image, aiming at the problem that the classification effect of the internal pixels of the target is not ideal, a multi-scale fusion structure about the dimension of the feature map is proposed as the classifier module of the model. In order to further improve the performance of semantic segmentation model, inspired by the Generative adversarial nets, combined with super-resolution, generative semantic segmentation architecture is proposed. In order to verify the effect of the two methods, the kappa coefficient was selected as the evaluation to conduct the semantic segmentation experiment of the remote sensing image of seaculture. With little to no increase in the scale of the model, the classification ability of the model is improved, and the effect is compared intuitively from the segmentation image. © 2020 Totem Publisher, Inc. All rights reserved.
引用
收藏
页码:711 / 719
页数:8
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