add documents of CvHaarClassifierCascade

This commit is contained in:
ser1zw 2012-08-05 01:45:20 +09:00
parent 5348bf91de
commit 19b8a74911
4 changed files with 41 additions and 61 deletions

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@ -11,11 +11,7 @@
/*
* Document-class: OpenCV::CvHaarClassifierCascade
*
* CvHaarClassifierCascade object is "fast-object-detector".
* This detector can discover object (e.g. human's face) from image.
*
* Find face-area from picture "lena"...
* link:../images/face_detect_from_lena.jpg
* Haar Feature-based Cascade Classifier for Object Detection
*/
__NAMESPACE_BEGIN_OPENCV
__NAMESPACE_BEGIN_CVHAARCLASSIFERCASCADE
@ -28,23 +24,6 @@ rb_class()
return rb_klass;
}
void define_ruby_class()
{
if (rb_klass)
return;
/*
* opencv = rb_define_module("OpenCV");
*
* note: this comment is used by rdoc.
*/
VALUE opencv = rb_module_opencv();
rb_klass = rb_define_class_under(opencv, "CvHaarClassifierCascade", rb_cObject);
rb_define_alloc_func(rb_klass, rb_allocate);
rb_define_singleton_method(rb_klass, "load", RUBY_METHOD_FUNC(rb_load), 1);
rb_define_method(rb_klass, "detect_objects", RUBY_METHOD_FUNC(rb_detect_objects), -1);
}
VALUE
rb_allocate(VALUE klass)
{
@ -61,18 +40,13 @@ cvhaarclassifiercascade_free(void* ptr)
}
/*
* call-seq:
* CvHaarClassiferCascade.load(<i>path</i>) -> object-detector
*
* Load trained cascade of haar classifers from file.
* Object detection classifiers are stored in XML or YAML files.
* sample of object detection classifier files is included by OpenCV.
*
* You can found these at
* C:\Program Files\OpenCV\data\haarcascades\*.xml (Windows, default install path)
*
* e.g. you want to try to detect human's face.
* detector = CvHaarClassiferCascade.load("haarcascade_frontalface_alt.xml")
* @overload load(filename)
* @param filename [String] Haar classifer file name
* @return [CvHaarClassifierCascade] Object detector
* @scope class
* @opencv_func cvLoad
*/
VALUE
rb_load(VALUE klass, VALUE path)
@ -90,35 +64,23 @@ rb_load(VALUE klass, VALUE path)
}
/*
* call-seq:
* detect_objects(image[, options]) -> cvseq(include CvAvgComp object)
* detect_objects(image[, options]){|cmp| ... } -> cvseq(include CvAvgComp object)
* Detects objects of different sizes in the input image.
*
* Detects objects in the image. This method finds rectangular regions in the
* given image that are likely to contain objects the cascade has been trained
* for and return those regions as a sequence of rectangles.
*
* * <i>option</i> should be Hash include these keys.
* :scale_factor (should be > 1.0)
* The factor by which the search window is scaled between the subsequent scans,
* 1.1 mean increasing window by 10%.
* :storage
* @overload detect_objects(image, options = nil)
* @param image [CvMat,IplImage] Matrix of the type CV_8U containing an image where objects are detected.
* @param options [Hash] Options
* @option options [Number] :scale_factor
* Parameter specifying how much the image size is reduced at each image scale.
* @option options [Number] :storage
* Memory storage to store the resultant sequence of the object candidate rectangles
* :flags
* Mode of operation. Currently the only flag that may be specified is CV_HAAR_DO_CANNY_PRUNING .
* If it is set, the function uses Canny edge detector to reject some image regions that contain
* too few or too much edges and thus can not contain the searched object. The particular threshold
* values are tuned for face detection and in this case the pruning speeds up the processing
* :min_neighbors
* Minimum number (minus 1) of neighbor rectangles that makes up an object.
* All the groups of a smaller number of rectangles than min_neighbors - 1 are rejected.
* If min_neighbors is 0, the function does not any grouping at all and returns all the detected
* candidate rectangles, whitch many be useful if the user wants to apply a customized grouping procedure.
* :min_size
* Minimum window size. By default, it is set to size of samples the classifier has been
* trained on (~20x20 for face detection).
* :max_size
* aximum window size to use. By default, it is set to the size of the image.
* @option options [Number] :min_neighbors
* Parameter specifying how many neighbors each candidate rectangle should have to retain it.
* @option options [CvSize] :min_size
* Minimum possible object size. Objects smaller than that are ignored.
* @option options [CvSize] :max_size
* Maximum possible object size. Objects larger than that are ignored.
* @return [CvSeq<CvAvgComp>] Detected objects as a list of rectangles
* @opencv_func cvHaarDetectObjects
*/
VALUE
rb_detect_objects(int argc, VALUE *argv, VALUE self)
@ -164,5 +126,23 @@ rb_detect_objects(int argc, VALUE *argv, VALUE self)
return result;
}
void
init_ruby_class()
{
#if 0
// For documentation using YARD
VALUE opencv = rb_define_module("OpenCV");
#endif
if (rb_klass)
return;
VALUE opencv = rb_module_opencv();
rb_klass = rb_define_class_under(opencv, "CvHaarClassifierCascade", rb_cObject);
rb_define_alloc_func(rb_klass, rb_allocate);
rb_define_singleton_method(rb_klass, "load", RUBY_METHOD_FUNC(rb_load), 1);
rb_define_method(rb_klass, "detect_objects", RUBY_METHOD_FUNC(rb_detect_objects), -1);
}
__NAMESPACE_END_CVHAARCLASSIFERCASCADE
__NAMESPACE_END_OPENCV

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@ -20,7 +20,7 @@ __NAMESPACE_BEGIN_CVHAARCLASSIFERCASCADE
VALUE rb_class();
void define_ruby_class();
void init_ruby_class();
VALUE rb_allocate(VALUE klass);

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@ -711,7 +711,7 @@ extern "C" {
mOpenCV::cCvConnectedComp::init_ruby_class();
mOpenCV::cCvAvgComp::init_ruby_class();
mOpenCV::cCvHaarClassifierCascade::define_ruby_class();
mOpenCV::cCvHaarClassifierCascade::init_ruby_class();
mOpenCV::mGUI::define_ruby_module();
mOpenCV::mGUI::cWindow::define_ruby_class();
mOpenCV::mGUI::cTrackbar::define_ruby_class();

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