SmokeNet: Satellite Smoke Scene Detection Using Convolutional Neural Network with Spatial and Channel-Wise Attention
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Title
SmokeNet: Satellite Smoke Scene Detection Using Convolutional Neural Network with Spatial and Channel-Wise Attention
Authors
Keywords
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Journal
Remote Sensing
Volume 11, Issue 14, Pages 1702
Publisher
MDPI AG
Online
2019-07-19
DOI
10.3390/rs11141702
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