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Full-waveform LiDAR echo decomposition based on dense and residual neural networks
Gangping Liu,
Jun Ke
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Corresponding author for this work
School of Optics and Photonics
Beijing Institute of Technology
Ministry of Education in China
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Article
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peer-review
3
Citations (Scopus)
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Computer Science
Conventional Method
50%
de-noising
25%
Decomposition Method
50%
Deep Neural Network
25%
Deep Residual Network
100%
Network Connection
100%
Preprocessing
25%
Residual Neural Network
100%
Engineering
Conventional Method
100%
Deep Neural Network
50%
Dynamic Range
50%
Filtration
50%
Chemical Engineering
Deep Neural Network
100%
Neural Network
100%
Physics
Dynamic Range
50%
Neural Network
100%