In this tutorial you will learn how to use the 'dnn_superres' interface to upscale an image via pre-trained neural networks. It works in C++ and Python.
Building
When building OpenCV, run the following command to build all the contrib module:
cmake -D OPENCV_EXTRA_MODULES_PATH=<opencv_contrib>/modules/
Or only build the dnn_superres module:
cmake -D OPENCV_EXTRA_MODULES_PATH=<opencv_contrib>/modules/dnn_superres
Or make sure you check the dnn_superres module in the GUI version of CMake: cmake-gui.
Source Code of the sample
You can run the sample code by doing
<path_of_your_opencv_build_directory>/bin/example_dnn_superres_dnn_superres <path_to_image.png> <algo_string> <upscale_int> <model_path.pb>
Example:
/home/opencv/build/bin/example_dnn_superres_dnn_superres /home/image.png edsr 2 /home/EDSR_x2.pb
15using namespace dnn_superres;
17int main(
int argc,
char *argv[])
22 cout <<
"usage: Arg 1: image | Path to image" << endl;
23 cout <<
"\t Arg 2: algorithm | bilinear, bicubic, edsr, espcn, fsrcnn or lapsrn" << endl;
24 cout <<
"\t Arg 3: scale | 2, 3 or 4 \n";
25 cout <<
"\t Arg 4: path to model file \n";
29 string img_path = string(argv[1]);
30 string algorithm = string(argv[2]);
31 int scale = atoi(argv[3]);
35 path = string(argv[4]);
39 Mat original_img(img);
42 std::cerr <<
"Couldn't load image: " << img <<
"\n";
51 if( algorithm ==
"bilinear" ){
52 resize(img, img_new,
Size(), scale, scale, 2);
54 else if( algorithm ==
"bicubic" )
56 resize(img, img_new,
Size(), scale, scale, 3);
58 else if( algorithm ==
"edsr" || algorithm ==
"espcn" || algorithm ==
"fsrcnn" || algorithm ==
"lapsrn" )
61 sr.setModel(algorithm, scale);
62 sr.upsample(img, img_new);
65 std::cerr <<
"Algorithm not recognized. \n";
68 if ( img_new.
empty() )
70 std::cerr <<
"Upsampling failed. \n";
73 cout <<
"Upsampling succeeded. \n";
n-dimensional dense array class
Definition mat.hpp:812
bool empty() const
Returns true if the array has no elements.
Template class for specifying the size of an image or rectangle.
Definition types.hpp:335
void imshow(const String &winname, InputArray mat)
Displays an image in the specified window.
int waitKey(int delay=0)
Waits for a pressed key.
void namedWindow(const String &winname, int flags=WINDOW_AUTOSIZE)
Creates a window.
CV_EXPORTS_W Mat imread(const String &filename, int flags=IMREAD_COLOR)
Loads an image from a file.
int main(int argc, char *argv[])
Definition highgui_qt.cpp:3
"black box" representation of the file storage associated with a file on disk.
Definition core.hpp:102
Explanation
Set header and namespaces
using namespace dnn;
using namespace dnn_superres;
If you want you can set the namespace like the code above.
Create the Dnn Superres object
This is just to create the object, register the custom dnn layers and get access to the class functions.
Read the model
path = "models/FSRCNN_x2.pb"
sr.readModel(path);
This reads the TensorFlow model from the .pb file. Here 'path' is one of the pre-trained Tensorflow models' path file. You can download the models from OpenCV's GitHub, in the 'dnn_superres' module.
Set the model
sr.setModel("fsrcnn", 2);
Depending on the model you want to run, you have to set the algorithm and upscale factor. This is to know the desired algorithm and scale, even if you change the .pb file's name. For example: if you chose FSRCNN_x2.pb, your algorithm and scale will be 'fsrcnn' and 2, respectively. (Other algorithm options include "edsr", "espcn" and "lapsrn".)
Upscale an image
sr.upsample(img, img_new);
Now we can upscale any image. Load an image via the standard 'imread' function and create a new Mat for the destination image. Then simple upscale. Your upscaled image is located in 'img_new'.
An example in python
import cv2
from cv2 import dnn_superres
sr = dnn_superres.DnnSuperResImpl_create()
image = cv2.imread('./image.png')
path = "EDSR_x4.pb"
sr.readModel(path)
sr.setModel("edsr", 4)
result = sr.upsample(image)
cv2.imwrite("./upscaled.png", result)
Original:
Upscaled Image via FSRCNN:
Upscaled Image via Bicubic Interpolation: