Automated Characterization of Yardangs Using Deep Convolutional Neural Networks

Volume: 13, Issue: 4, Pages: 733 - 733
Published: Feb 17, 2021
Abstract
The morphological characteristics of yardangs are the direct evidence that reveals the wind and fluvial erosion for lacustrine sediments in arid areas. These features can be critical indicators in reconstructing local wind directions and environment conditions. Thus, the fast and accurate extraction of yardangs is key to studying their regional distribution and evolution process. However, the existing automated methods to characterize yardangs...
Paper Details
Title
Automated Characterization of Yardangs Using Deep Convolutional Neural Networks
Published Date
Feb 17, 2021
Volume
13
Issue
4
Pages
733 - 733
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