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ODD-Net: a hybrid deep learning architecture for image dehazing
C. S. Asha
, Abu Bakr Siddiq
, Razeem Akthar
, M. Ragesh Rajan
,
Shilpa Suresh
*
*
Corresponding author for this work
Department of Mechatronics Engineering, Manipal Institute of Technology, Manipal
Research output
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Article
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peer-review
4
Citations (Scopus)
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INIS
applications
20%
architecture
100%
atmospherics
80%
cameras
20%
comparative evaluations
20%
data
20%
datasets
20%
depth
20%
detection
20%
errors
20%
hybrids
100%
images
100%
information
20%
learning
100%
maps
40%
metrics
20%
navigation
20%
nonlinear problems
20%
outdoors
20%
performance
20%
power
20%
scattering
20%
surveillance
20%
transmission
60%
visibility
40%
Computer Science
Depth Measurement
33%
Image Dehazing
100%
Map Estimation
33%
Nonlinear Regression
33%
Spatial Method
33%
Engineering
Image Dehazing
100%
Map Estimation
33%
Earth and Planetary Sciences
Atmospheric Scattering
33%
Depth Measurement
33%