卫星图像道路分割中全连通层与反卷积层的比较

Dhruv Bhugwan, Pravesh Ranchod, Richard Klein, Benjamin Rosman
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引用次数: 0

摘要

使用全卷积网络的语义分割已经迅速成为一种流行的解决方案,因为它们提供了非常准确的每像素分类。然而,反卷积层的实现及其机制与使用卷积神经网络的基于补丁的分割有很大不同。这两种技术都被用于从卫星图像中分割道路,但从未进行过比较。因此,我们研究了完全连接层和反卷积层之间的差异,并提供了从卫星图像中进行道路分割的每种方法之间的相关性和差异的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison between fully connected and deconvolutional layers for road segmentation from satellite imagery
Semantic segmentation using fully convolutional networks has quickly become a popular solution as they provide very accurate per pixel classification. However, the implementation of deconvolutional layers and their mechanics differ greatly to those of patch based segmentation using convolutional neural networks. Both techniques have been used for road segmentation from satellite imagery but never compared. Thus we investigate the difference between fully connected and deconvolutional layers and provide an interpretation as to the correlation and differences between each methodology for road segmentation from satellite imagery.
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