Introduction {#intro}
============

OpenCV (Open Source Computer Vision Library: <http://opencv.org>) is an open-source BSD-licensed
library that includes several hundreds of computer vision algorithms. The document describes the
so-called OpenCV 2.x API, which is essentially a C++ API, as opposite to the C-based OpenCV 1.x API.
The latter is described in opencv1x.pdf.

OpenCV has a modular structure, which means that the package includes several shared or static
libraries. The following modules are available:

-   @ref core - a compact module defining basic data structures, including the dense
    multi-dimensional array Mat and basic functions used by all other modules.
-   @ref imgproc - an image processing module that includes linear and non-linear image filtering,
    geometrical image transformations (resize, affine and perspective warping, generic table-based
    remapping), color space conversion, histograms, and so on.
-   **video** - a video analysis module that includes motion estimation, background subtraction,
    and object tracking algorithms.
-   **calib3d** - basic multiple-view geometry algorithms, single and stereo camera calibration,
    object pose estimation, stereo correspondence algorithms, and elements of 3D reconstruction.
-   **features2d** - salient feature detectors, descriptors, and descriptor matchers.
-   **objdetect** - detection of objects and instances of the predefined classes (for example,
    faces, eyes, mugs, people, cars, and so on).
-   **highgui** - an easy-to-use interface to simple UI capabilities.
-   **videoio** - an easy-to-use interface to video capturing and video codecs.
-   **gpu** - GPU-accelerated algorithms from different OpenCV modules.
-   ... some other helper modules, such as FLANN and Google test wrappers, Python bindings, and
    others.

The further chapters of the document describe functionality of each module. But first, make sure to
get familiar with the common API concepts used thoroughly in the library.

API Concepts
------------

### cv Namespace

All the OpenCV classes and functions are placed into the cv namespace. Therefore, to access this
functionality from your code, use the cv:: specifier or using namespace cv; directive:
@code
#include "opencv2/core.hpp"
...
cv::Mat H = cv::findHomography(points1, points2, CV_RANSAC, 5);
...
@endcode
or :
~~~
    #include "opencv2/core.hpp"
    using namespace cv;
    ...
    Mat H = findHomography(points1, points2, CV_RANSAC, 5 );
    ...
~~~
Some of the current or future OpenCV external names may conflict with STL or other libraries. In
this case, use explicit namespace specifiers to resolve the name conflicts:
@code
    Mat a(100, 100, CV_32F);
    randu(a, Scalar::all(1), Scalar::all(std::rand()));
    cv::log(a, a);
    a /= std::log(2.);
@endcode

### Automatic Memory Management

OpenCV handles all the memory automatically.

First of all, std::vector, Mat, and other data structures used by the functions and methods have
destructors that deallocate the underlying memory buffers when needed. This means that the
destructors do not always deallocate the buffers as in case of Mat. They take into account possible
data sharing. A destructor decrements the reference counter associated with the matrix data buffer.
The buffer is deallocated if and only if the reference counter reaches zero, that is, when no other
structures refer to the same buffer. Similarly, when a Mat instance is copied, no actual data is
really copied. Instead, the reference counter is incremented to memorize that there is another owner
of the same data. There is also the Mat::clone method that creates a full copy of the matrix data.
See the example below:
@code
    // create a big 8Mb matrix
    Mat A(1000, 1000, CV_64F);

    // create another header for the same matrix;
    // this is an instant operation, regardless of the matrix size.
    Mat B = A;
    // create another header for the 3-rd row of A; no data is copied either
    Mat C = B.row(3);
    // now create a separate copy of the matrix
    Mat D = B.clone();
    // copy the 5-th row of B to C, that is, copy the 5-th row of A
    // to the 3-rd row of A.
    B.row(5).copyTo(C);
    // now let A and D share the data; after that the modified version
    // of A is still referenced by B and C.
    A = D;
    // now make B an empty matrix (which references no memory buffers),
    // but the modified version of A will still be referenced by C,
    // despite that C is just a single row of the original A
    B.release();

    // finally, make a full copy of C. As a result, the big modified
    // matrix will be deallocated, since it is not referenced by anyone
    C = C.clone();
@endcode
You see that the use of Mat and other basic structures is simple. But what about high-level classes
or even user data types created without taking automatic memory management into account? For them,
OpenCV offers the Ptr template class that is similar to std::shared\_ptr from C++11. So, instead of
using plain pointers:
@code
    T* ptr = new T(...);
@endcode
you can use:
@code
    Ptr<T> ptr(new T(...));
@endcode
or:
@code
    Ptr<T> ptr = makePtr<T>(...);
@endcode
Ptr\<T\> encapsulates a pointer to a T instance and a reference counter associated with the pointer.
See the Ptr description for details.

### Automatic Allocation of the Output Data

OpenCV deallocates the memory automatically, as well as automatically allocates the memory for
output function parameters most of the time. So, if a function has one or more input arrays (cv::Mat
instances) and some output arrays, the output arrays are automatically allocated or reallocated. The
size and type of the output arrays are determined from the size and type of input arrays. If needed,
the functions take extra parameters that help to figure out the output array properties.

Example:
@code
    #include "opencv2/imgproc.hpp"
    #include "opencv2/highgui.hpp"

    using namespace cv;

    int main(int, char**)
    {
        VideoCapture cap(0);
        if(!cap.isOpened()) return -1;

        Mat frame, edges;
        namedWindow("edges",1);
        for(;;)
        {
            cap >> frame;
            cvtColor(frame, edges, COLOR_BGR2GRAY);
            GaussianBlur(edges, edges, Size(7,7), 1.5, 1.5);
            Canny(edges, edges, 0, 30, 3);
            imshow("edges", edges);
            if(waitKey(30) >= 0) break;
        }
        return 0;
    }
@endcode
The array frame is automatically allocated by the \>\> operator since the video frame resolution and
the bit-depth is known to the video capturing module. The array edges is automatically allocated by
the cvtColor function. It has the same size and the bit-depth as the input array. The number of
channels is 1 because the color conversion code COLOR\_BGR2GRAY is passed, which means a color to
grayscale conversion. Note that frame and edges are allocated only once during the first execution
of the loop body since all the next video frames have the same resolution. If you somehow change the
video resolution, the arrays are automatically reallocated.

The key component of this technology is the Mat::create method. It takes the desired array size and
type. If the array already has the specified size and type, the method does nothing. Otherwise, it
releases the previously allocated data, if any (this part involves decrementing the reference
counter and comparing it with zero), and then allocates a new buffer of the required size. Most
functions call the Mat::create method for each output array, and so the automatic output data
allocation is implemented.

Some notable exceptions from this scheme are cv::mixChannels, cv::RNG::fill, and a few other
functions and methods. They are not able to allocate the output array, so you have to do this in
advance.

### Saturation Arithmetics

As a computer vision library, OpenCV deals a lot with image pixels that are often encoded in a
compact, 8- or 16-bit per channel, form and thus have a limited value range. Furthermore, certain
operations on images, like color space conversions, brightness/contrast adjustments, sharpening,
complex interpolation (bi-cubic, Lanczos) can produce values out of the available range. If you just
store the lowest 8 (16) bits of the result, this results in visual artifacts and may affect a
further image analysis. To solve this problem, the so-called *saturation* arithmetics is used. For
example, to store r, the result of an operation, to an 8-bit image, you find the nearest value
within the 0..255 range:

\f[I(x,y)= \min ( \max (\textrm{round}(r), 0), 255)\f]

Similar rules are applied to 8-bit signed, 16-bit signed and unsigned types. This semantics is used
everywhere in the library. In C++ code, it is done using the saturate\_cast\<\> functions that
resemble standard C++ cast operations. See below the implementation of the formula provided above:
@code
    I.at<uchar>(y, x) = saturate_cast<uchar>(r);
@endcode
where cv::uchar is an OpenCV 8-bit unsigned integer type. In the optimized SIMD code, such SSE2
instructions as paddusb, packuswb, and so on are used. They help achieve exactly the same behavior
as in C++ code.

@note Saturation is not applied when the result is 32-bit integer.

### Fixed Pixel Types. Limited Use of Templates

Templates is a great feature of C++ that enables implementation of very powerful, efficient and yet
safe data structures and algorithms. However, the extensive use of templates may dramatically
increase compilation time and code size. Besides, it is difficult to separate an interface and
implementation when templates are used exclusively. This could be fine for basic algorithms but not
good for computer vision libraries where a single algorithm may span thousands lines of code.
Because of this and also to simplify development of bindings for other languages, like Python, Java,
Matlab that do not have templates at all or have limited template capabilities, the current OpenCV
implementation is based on polymorphism and runtime dispatching over templates. In those places
where runtime dispatching would be too slow (like pixel access operators), impossible (generic
Ptr\<\> implementation), or just very inconvenient (saturate\_cast\<\>()) the current implementation
introduces small template classes, methods, and functions. Anywhere else in the current OpenCV
version the use of templates is limited.

Consequently, there is a limited fixed set of primitive data types the library can operate on. That
is, array elements should have one of the following types:

-   8-bit unsigned integer (uchar)
-   8-bit signed integer (schar)
-   16-bit unsigned integer (ushort)
-   16-bit signed integer (short)
-   32-bit signed integer (int)
-   32-bit floating-point number (float)
-   64-bit floating-point number (double)
-   a tuple of several elements where all elements have the same type (one of the above). An array
    whose elements are such tuples, are called multi-channel arrays, as opposite to the
    single-channel arrays, whose elements are scalar values. The maximum possible number of
    channels is defined by the CV\_CN\_MAX constant, which is currently set to 512.

For these basic types, the following enumeration is applied:
@code
    enum { CV_8U=0, CV_8S=1, CV_16U=2, CV_16S=3, CV_32S=4, CV_32F=5, CV_64F=6 };
@endcode
Multi-channel (n-channel) types can be specified using the following options:

-   CV_8UC1 ... CV_64FC4 constants (for a number of channels from 1 to 4)
-   CV_8UC(n) ... CV_64FC(n) or CV_MAKETYPE(CV_8U, n) ... CV_MAKETYPE(CV_64F, n) macros when
    the number of channels is more than 4 or unknown at the compilation time.

@note `CV_32FC1 == CV_32F, CV_32FC2 == CV_32FC(2) == CV_MAKETYPE(CV_32F, 2)`, and
`CV_MAKETYPE(depth, n) == ((depth&7) + ((n-1)<<3)``. This means that the constant type is formed from the
depth, taking the lowest 3 bits, and the number of channels minus 1, taking the next
`log2(CV_CN_MAX)`` bits.

Examples:
@code
    Mat mtx(3, 3, CV_32F); // make a 3x3 floating-point matrix
    Mat cmtx(10, 1, CV_64FC2); // make a 10x1 2-channel floating-point
                               // matrix (10-element complex vector)
    Mat img(Size(1920, 1080), CV_8UC3); // make a 3-channel (color) image
                                        // of 1920 columns and 1080 rows.
    Mat grayscale(image.size(), CV_MAKETYPE(image.depth(), 1)); // make a 1-channel image of
                                                                // the same size and same
                                                                // channel type as img
@endcode
Arrays with more complex elements cannot be constructed or processed using OpenCV. Furthermore, each
function or method can handle only a subset of all possible array types. Usually, the more complex
the algorithm is, the smaller the supported subset of formats is. See below typical examples of such
limitations:

-   The face detection algorithm only works with 8-bit grayscale or color images.
-   Linear algebra functions and most of the machine learning algorithms work with floating-point
    arrays only.
-   Basic functions, such as cv::add, support all types.
-   Color space conversion functions support 8-bit unsigned, 16-bit unsigned, and 32-bit
    floating-point types.

The subset of supported types for each function has been defined from practical needs and could be
extended in future based on user requests.

### InputArray and OutputArray

Many OpenCV functions process dense 2-dimensional or multi-dimensional numerical arrays. Usually,
such functions take cppMat as parameters, but in some cases it's more convenient to use
std::vector\<\> (for a point set, for example) or Matx\<\> (for 3x3 homography matrix and such). To
avoid many duplicates in the API, special "proxy" classes have been introduced. The base "proxy"
class is InputArray. It is used for passing read-only arrays on a function input. The derived from
InputArray class OutputArray is used to specify an output array for a function. Normally, you should
not care of those intermediate types (and you should not declare variables of those types
explicitly) - it will all just work automatically. You can assume that instead of
InputArray/OutputArray you can always use Mat, std::vector\<\>, Matx\<\>, Vec\<\> or Scalar. When a
function has an optional input or output array, and you do not have or do not want one, pass
cv::noArray().

### Error Handling

OpenCV uses exceptions to signal critical errors. When the input data has a correct format and
belongs to the specified value range, but the algorithm cannot succeed for some reason (for example,
the optimization algorithm did not converge), it returns a special error code (typically, just a
boolean variable).

The exceptions can be instances of the cv::Exception class or its derivatives. In its turn,
cv::Exception is a derivative of std::exception. So it can be gracefully handled in the code using
other standard C++ library components.

The exception is typically thrown either using the CV\_Error(errcode, description) macro, or its
printf-like CV\_Error\_(errcode, printf-spec, (printf-args)) variant, or using the
CV\_Assert(condition) macro that checks the condition and throws an exception when it is not
satisfied. For performance-critical code, there is CV\_DbgAssert(condition) that is only retained in
the Debug configuration. Due to the automatic memory management, all the intermediate buffers are
automatically deallocated in case of a sudden error. You only need to add a try statement to catch
exceptions, if needed: :
@code
    try
    {
        ... // call OpenCV
    }
    catch( cv::Exception& e )
    {
        const char* err_msg = e.what();
        std::cout << "exception caught: " << err_msg << std::endl;
    }
@endcode

### Multi-threading and Re-enterability

The current OpenCV implementation is fully re-enterable. That is, the same function, the same
*constant* method of a class instance, or the same *non-constant* method of different class
instances can be called from different threads. Also, the same cv::Mat can be used in different
threads because the reference-counting operations use the architecture-specific atomic instructions.