Browse Source

fix typo.

git-svn-id: http://newslabx.csie.ntu.edu.tw/svn/Ginger@77 5747cdd2-2146-426f-b2b0-0570f90b98ed
master
Hobe 4 years ago
parent
commit
915af0c8ee
1 changed files with 2 additions and 2 deletions
  1. +2
    -2
      trunk/RTCSA_SS/02Background.tex

+ 2
- 2
trunk/RTCSA_SS/02Background.tex View File

@ -11,7 +11,7 @@ C. Dong et al.~\cite{ChaoDong16} proposed a deep learning method for single imag
super-resolution (SR). Their method learns how to directly map the low-resolution
image to high-resolution image. They show that the traditional sparse coding
based SR methods can be reformulated into a deep convolutional neural network.
SRCNN consists three operations.%, illustrated in Figure~\ref{fig:SRCNN_model}.
SRCNN consists three operations.
The first layer of SRCNN model extracts the patches from low-resolution image.
The second layer maps the patches from low-resolution to high-resolution. The
third layer will reconstruct the high-resolution image by the high-resolution
@ -27,7 +27,7 @@ patches.
\subsection{Thermal cameras}
In this work, we use two different resolution thermal cameras to play the role
of low-resolution and high-resolution camera. For low-resolution camera, we use
of low-resolution and high-resolution cameras. For low-resolution camera, we use
Grid-EYE thermal camera. Grid-EYE is a thermal camera that can output
$8 \times 8$ pixels thermal data with $2.5^\circ C$ accuracy and $0.25^\circ C$
resolution at $10$ fps. For the high-resolution one, we use Lepton 3. The


Loading…
Cancel
Save