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Comparative Efficiency Analysis for Various Neuroarchitectures for Semantic Segmentation of Images in Remote Sensing Applications

机译:遥感应用中图像语义分割各种神经建筑的比较效率分析

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摘要

The problem of image understanding currently attracts considerable attention of research-ers, since its solution is critically important for a significant number of applied problems. Among the most critical components of this problem is the semantic segmentation of images, which provides a classification of objects on the image at the pixel level. One of the applied problems in which semantic segmentation is an essential element of the process of solving them is the information support of the behavior control systems for robotic UAVs. Among the various types of images that are used to solve such problems, it should be noted images obtained by remote sensing of the Earth's surface. A signif-icant number of variants of neuroarchitectures based on convolutional neural networks have been pro-posed to solve the semantic image segmentation problem, However, for various reasons, not all of them are suitable for working with images of the Earth's surface obtained using remote sensing. Neu-roarchitectures that are potentially suitable for solving the problem of semantic segmentation of images of the Earth's surface are identified, a comparative analysis of their effectiveness concerning this task is carried out.
机译:图像理解的问题目前吸引了对研究的相当大的关注,因为它的解决方案对于大量应用问题来说至关重要。在该问题的最关键的组件中,图像的语义分割,其在像素级别提供图像上的对象的分类。其中语义分割是解决它们的过程的基本要素的应用问题是机器人无人机的行为控制系统的信息支持。在用于解决此类问题的各种类型的图像中,应该注意通过遥感地球表面获得的图像。基于卷积神经网络的基于卷积神经网络的神经建筑物的变体数量已经提出了解决语义图像分割问题,然而,由于各种原因,并非所有这些都适合使用使用遥控器获得的地球表面的图像传感。鉴定了诸如求解地表表面图像图像的语义分割问题的Neu-Ro建筑,进行了对此任务的有效性的比较分析。

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