OpenCV  4.5.1-dev Open Source Computer Vision
XML/YAML Persistence

## Classes

class  cv::FileNode
File Storage Node class. More...

class  cv::FileNodeIterator
used to iterate through sequences and mappings. More...

class  cv::FileStorage
XML/YAML/JSON file storage class that encapsulates all the information necessary for writing or reading data to/from a file. More...

# XML/YAML/JSON file storages.

## Writing to a file storage.

You can store and then restore various OpenCV data structures to/from XML (http://www.w3c.org/XML), YAML (http://www.yaml.org) or JSON (http://www.json.org/) formats. Also, it is possible to store and load arbitrarily complex data structures, which include OpenCV data structures, as well as primitive data types (integer and floating-point numbers and text strings) as their elements.

Use the following procedure to write something to XML, YAML or JSON:

1. Create new FileStorage and open it for writing. It can be done with a single call to FileStorage::FileStorage constructor that takes a filename, or you can use the default constructor and then call FileStorage::open. Format of the file (XML, YAML or JSON) is determined from the filename extension (".xml", ".yml"/".yaml" and ".json", respectively)
2. Write all the data you want using the streaming operator <<, just like in the case of STL streams.
3. Close the file using FileStorage::release. FileStorage destructor also closes the file.

Here is an example:

#include "opencv2/core.hpp"
#include <time.h>
using namespace cv;
int main(int, char** argv)
{
fs << "frameCount" << 5;
time_t rawtime; time(&rawtime);
fs << "calibrationDate" << asctime(localtime(&rawtime));
Mat cameraMatrix = (Mat_<double>(3,3) << 1000, 0, 320, 0, 1000, 240, 0, 0, 1);
Mat distCoeffs = (Mat_<double>(5,1) << 0.1, 0.01, -0.001, 0, 0);
fs << "cameraMatrix" << cameraMatrix << "distCoeffs" << distCoeffs;
fs << "features" << "[";
for( int i = 0; i < 3; i++ )
{
int x = rand() % 640;
int y = rand() % 480;
uchar lbp = rand() % 256;
fs << "{:" << "x" << x << "y" << y << "lbp" << "[:";
for( int j = 0; j < 8; j++ )
fs << ((lbp >> j) & 1);
fs << "]" << "}";
}
fs << "]";
fs.release();
return 0;
}

The sample above stores to YML an integer, a text string (calibration date), 2 matrices, and a custom structure "feature", which includes feature coordinates and LBP (local binary pattern) value. Here is output of the sample:

%YAML:1.0
frameCount: 5
calibrationDate: "Fri Jun 17 14:09:29 2011\n"
cameraMatrix: !!opencv-matrix
rows: 3
cols: 3
dt: d
data: [ 1000., 0., 320., 0., 1000., 240., 0., 0., 1. ]
distCoeffs: !!opencv-matrix
rows: 5
cols: 1
dt: d
data: [ 1.0000000000000001e-01, 1.0000000000000000e-02,
-1.0000000000000000e-03, 0., 0. ]
features:
- { x:167, y:49, lbp:[ 1, 0, 0, 1, 1, 0, 1, 1 ] }
- { x:298, y:130, lbp:[ 0, 0, 0, 1, 0, 0, 1, 1 ] }
- { x:344, y:158, lbp:[ 1, 1, 0, 0, 0, 0, 1, 0 ] }

As an exercise, you can replace ".yml" with ".xml" or ".json" in the sample above and see, how the corresponding XML file will look like.

Several things can be noted by looking at the sample code and the output:

• The produced YAML (and XML/JSON) consists of heterogeneous collections that can be nested. There are 2 types of collections: named collections (mappings) and unnamed collections (sequences). In mappings each element has a name and is accessed by name. This is similar to structures and std::map in C/C++ and dictionaries in Python. In sequences elements do not have names, they are accessed by indices. This is similar to arrays and std::vector in C/C++ and lists, tuples in Python. "Heterogeneous" means that elements of each single collection can have different types.

Top-level collection in YAML/XML/JSON is a mapping. Each matrix is stored as a mapping, and the matrix elements are stored as a sequence. Then, there is a sequence of features, where each feature is represented a mapping, and lbp value in a nested sequence.

• When you write to a mapping (a structure), you write element name followed by its value. When you write to a sequence, you simply write the elements one by one. OpenCV data structures (such as cv::Mat) are written in absolutely the same way as simple C data structures - using << operator.
• To write a mapping, you first write the special string { to the storage, then write the elements as pairs (fs << <element_name> << <element_value>) and then write the closing }.
• To write a sequence, you first write the special string [, then write the elements, then write the closing ].
• In YAML/JSON (but not XML), mappings and sequences can be written in a compact Python-like inline form. In the sample above matrix elements, as well as each feature, including its lbp value, is stored in such inline form. To store a mapping/sequence in a compact form, put : after the opening character, e.g. use {: instead of { and [: instead of [. When the data is written to XML, those extra : are ignored.

## Reading data from a file storage.

To read the previously written XML, YAML or JSON file, do the following:

1. Open the file storage using FileStorage::FileStorage constructor or FileStorage::open method. In the current implementation the whole file is parsed and the whole representation of file storage is built in memory as a hierarchy of file nodes (see FileNode)
2. Read the data you are interested in. Use FileStorage::operator [], FileNode::operator [] and/or FileNodeIterator.
3. Close the storage using FileStorage::release.

Here is how to read the file created by the code sample above:

// first method: use (type) operator on FileNode.
int frameCount = (int)fs2["frameCount"];
String date;
// second method: use FileNode::operator >>
fs2["calibrationDate"] >> date;
Mat cameraMatrix2, distCoeffs2;
fs2["cameraMatrix"] >> cameraMatrix2;
fs2["distCoeffs"] >> distCoeffs2;
cout << "frameCount: " << frameCount << endl
<< "calibration date: " << date << endl
<< "camera matrix: " << cameraMatrix2 << endl
<< "distortion coeffs: " << distCoeffs2 << endl;
FileNode features = fs2["features"];
FileNodeIterator it = features.begin(), it_end = features.end();
int idx = 0;
std::vector<uchar> lbpval;
// iterate through a sequence using FileNodeIterator
for( ; it != it_end; ++it, idx++ )
{
cout << "feature #" << idx << ": ";
cout << "x=" << (int)(*it)["x"] << ", y=" << (int)(*it)["y"] << ", lbp: (";
// you can also easily read numerical arrays using FileNode >> std::vector operator.
(*it)["lbp"] >> lbpval;
for( int i = 0; i < (int)lbpval.size(); i++ )
cout << " " << (int)lbpval[i];
cout << ")" << endl;
}
fs2.release();

## Format specification

([count]{u|c|w|s|i|f|d})... where the characters correspond to fundamental C++ types:

• u 8-bit unsigned number
• c 8-bit signed number
• w 16-bit unsigned number
• s 16-bit signed number
• i 32-bit signed number
• f single precision floating-point number
• d double precision floating-point number
• r pointer, 32 lower bits of which are written as a signed integer. The type can be used to store structures with links between the elements.

count is the optional counter of values of a given type. For example, 2if means that each array element is a structure of 2 integers, followed by a single-precision floating-point number. The equivalent notations of the above specification are iif, 2i1f and so forth. Other examples: u means that the array consists of bytes, and 2d means the array consists of pairs of doubles.