Merge pull request #6773 from acinader:add-mask-to-match-template-demo
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@ -19,6 +19,10 @@ Theory
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Template matching is a technique for finding areas of an image that match (are similar) to a
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template image (patch).
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While the patch must be a rectangle it may be that not all of the
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rectangle is relevant. In such a case, a mask can be used to isolate the portion of the patch
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that should be used to find the match.
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### How does it work?
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- We need two primary components:
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@ -51,6 +55,30 @@ template image (patch).
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- In practice, we use the function @ref cv::minMaxLoc to locate the highest value (or lower,
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depending of the type of matching method) in the *R* matrix.
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### How does the mask work?
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- If masking is needed for the match, three components are required:
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-# **Source image (I):** The image in which we expect to find a match to the template image
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-# **Template image (T):** The patch image which will be compared to the template image
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-# **Mask image (M):** The mask, a grayscale image that masks the template
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- Only two matching methods currently accept a mask: CV_TM_SQDIFF and CV_TM_CCORR_NORMED (see
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below for explanation of all the matching methods available in opencv).
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- The mask must have the same dimensions as the template
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- The mask should have a CV_8U or CV_32F depth and the same number of channels
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as the template image. In CV_8U case, the mask values are treated as binary,
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i.e. zero and non-zero. In CV_32F case, the values should fall into [0..1]
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range and the template pixels will be multiplied by the corresponding mask pixel
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values. Since the input images in the sample have the CV_8UC3 type, the mask
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is also read as color image.
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
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### Which are the matching methods available in OpenCV?
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Good question. OpenCV implements Template matching in the function @ref cv::matchTemplate . The
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@ -88,10 +116,11 @@ Code
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----
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- **What does this program do?**
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- Loads an input image and a image patch (*template*)
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- Loads an input image, an image patch (*template*), and optionally a mask
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- Perform a template matching procedure by using the OpenCV function @ref cv::matchTemplate
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with any of the 6 matching methods described before. The user can choose the method by
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entering its selection in the Trackbar.
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entering its selection in the Trackbar. If a mask is supplied, it will only be used for
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the methods that support masking
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- Normalize the output of the matching procedure
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- Localize the location with higher matching probability
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- Draw a rectangle around the area corresponding to the highest match
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@ -113,10 +142,14 @@ Explanation
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int match_method;
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int max_Trackbar = 5;
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@endcode
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-# Load the source image and template:
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-# Load the source image, template, and optionally, if supported for the matching method, a mask:
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@code{.cpp}
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img = imread( argv[1], 1 );
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templ = imread( argv[2], 1 );
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bool method_accepts_mask = (CV_TM_SQDIFF == match_method || match_method == CV_TM_CCORR_NORMED);
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if (use_mask && method_accepts_mask)
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{ matchTemplate( img, templ, result, match_method, mask); }
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else
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{ matchTemplate( img, templ, result, match_method); }
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@endcode
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-# Create the windows to show the results:
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@code{.cpp}
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@ -150,10 +183,14 @@ Explanation
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@endcode
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-# Perform the template matching operation:
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@code{.cpp}
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matchTemplate( img, templ, result, match_method );
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bool method_accepts_mask = (CV_TM_SQDIFF == match_method || match_method == CV_TM_CCORR_NORMED);
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if (use_mask && method_accepts_mask)
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{ matchTemplate( img, templ, result, match_method, mask); }
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else
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{ matchTemplate( img, templ, result, match_method); }
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@endcode
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the arguments are naturally the input image **I**, the template **T**, the result **R** and the
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match_method (given by the Trackbar)
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the arguments are naturally the input image **I**, the template **T**, the result **R**, the
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match_method (given by the Trackbar), and optionally the mask image **M**
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-# We normalize the results:
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@code{.cpp}
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@ -13,7 +13,8 @@ using namespace std;
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using namespace cv;
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/// Global Variables
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Mat img; Mat templ; Mat result;
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bool use_mask;
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Mat img; Mat templ; Mat mask; Mat result;
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const char* image_window = "Source Image";
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const char* result_window = "Result window";
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@ -31,7 +32,7 @@ int main( int argc, char** argv )
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if (argc < 3)
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{
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cout << "Not enough parameters" << endl;
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cout << "Usage:\n./MatchTemplate_Demo <image_name> <template_name>" << endl;
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cout << "Usage:\n./MatchTemplate_Demo <image_name> <template_name> [<mask_name>]" << endl;
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return -1;
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}
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@ -39,7 +40,12 @@ int main( int argc, char** argv )
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img = imread( argv[1], IMREAD_COLOR );
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templ = imread( argv[2], IMREAD_COLOR );
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if(img.empty() || templ.empty())
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if(argc > 3) {
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use_mask = true;
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mask = imread( argv[3], IMREAD_COLOR );
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}
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if(img.empty() || templ.empty() || (use_mask && mask.empty()))
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{
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cout << "Can't read one of the images" << endl;
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return -1;
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@ -76,7 +82,12 @@ void MatchingMethod( int, void* )
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result.create( result_rows, result_cols, CV_32FC1 );
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/// Do the Matching and Normalize
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matchTemplate( img, templ, result, match_method );
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bool method_accepts_mask = (CV_TM_SQDIFF == match_method || match_method == CV_TM_CCORR_NORMED);
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if (use_mask && method_accepts_mask)
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{ matchTemplate( img, templ, result, match_method, mask); }
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else
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{ matchTemplate( img, templ, result, match_method); }
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normalize( result, result, 0, 1, NORM_MINMAX, -1, Mat() );
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/// Localizing the best match with minMaxLoc
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