1

I'm using OpenCV in C++ to perform template matching between a screenshot and an image from the disk. My screenshot seems to have the type CV_8UC4 but my template image has the type CV_8UC3. This causes the matchTemplate function to get an assertion error:

OpenCV(4.3.0) C:\...\opencv4\src\4.3.0-0c6047baf6.clean\modules\imgproc\src\templmatch.cpp:1104: error: (-215:Assertion failed) (depth == CV_8U || depth == CV_32F) && type == _templ.type() && _img.dims() <= 2 in function 'cv::matchTemplate'

To tackle this problem I tried to convert both cv::Mats to the same type using the convertTo function:

screen_shot.convertTo(screen_shot, CV_8UC3);
template_image.convertTo(template_image, CV_8UC3);

Surprisingly this does "nothing". The types of both cv::Mats are unmodified after the call. Why?

Another try was modifying the screenshot creation code to produce type CV_8UC3 directly. However, this then makes the GetDIBits() function fail:

bool dump_window_screen_to_opencv_mat(const HWND window_handle, cv::Mat& output_mat)
{
    auto* const h_window_dc = GetDC(window_handle);
    auto* const h_window_compatible_dc = CreateCompatibleDC(h_window_dc);
    if (!h_window_compatible_dc)
    {
        return false;
    }

    if (!SetStretchBltMode(h_window_compatible_dc, COLORONCOLOR))
    {
        DeleteDC(h_window_compatible_dc);
        return false;
    }

    const auto window_resolution = // ...
    const auto loc_window_width = window_resolution.x;
    const auto loc_window_height = window_resolution.y;

    const auto h_bit_map = CreateCompatibleBitmap(h_window_dc, loc_window_width, loc_window_height);
    if (!h_bit_map)
    {
        DeleteDC(h_window_compatible_dc);
        return false;
    }

    BITMAPINFOHEADER bit_map_info_header;
    bit_map_info_header.biSize = sizeof(BITMAPINFOHEADER);
    bit_map_info_header.biWidth = loc_window_width;
    bit_map_info_header.biHeight = -loc_window_height;
    bit_map_info_header.biPlanes = 1;
    bit_map_info_header.biBitCount = 32;
    bit_map_info_header.biCompression = BI_RGB;
    bit_map_info_header.biSizeImage = 0;
    bit_map_info_header.biXPelsPerMeter = 0;
    bit_map_info_header.biYPelsPerMeter = 0;
    bit_map_info_header.biClrUsed = 0;
    bit_map_info_header.biClrImportant = 0;

    if (!SelectObject(h_window_compatible_dc, h_bit_map))
    {
        DeleteObject(h_bit_map);
        DeleteDC(h_window_compatible_dc);
        return false;
    }

    if (!StretchBlt(
        h_window_compatible_dc,
        0, 0,
        loc_window_width, loc_window_height,
        h_window_dc,
        0, 0,
        loc_window_width, loc_window_height,
        SRCCOPY))
    {
        DeleteObject(h_bit_map);
        DeleteDC(h_window_compatible_dc);
        return false;
    }

    output_mat.create(loc_window_height, loc_window_width, CV_8UC4); // <-- Here we can specify the image type

    const auto has_di_bits_succeeded = GetDIBits(
        h_window_dc,
        h_bit_map,
        0,
        loc_window_height,
        output_mat.data,
        reinterpret_cast<BITMAPINFO*>(&bit_map_info_header),
        DIB_RGB_COLORS);
    if (!has_di_bits_succeeded)
    {
        DeleteObject(h_bit_map);
        DeleteDC(h_window_compatible_dc);
        return false;
    }

    DeleteObject(h_bit_map);
    DeleteDC(h_window_compatible_dc);

    return true;
}

Any idea how to fix this code to produce the correct image type or maybe I can try something completely different?

Check out this related question on opencv.org:
https://answers.opencv.org/question/236225

1 Answer 1

0

In cv::Mat::convertTo specs in the description of rtype (the second parameter) it is stated that it is the

desired output matrix type or, rather, the depth since the number of channels are the same as the input has; if rtype is negative, the output matrix will have the same type as the input.

I'm not sure if this is the problem, but couldn't find any other explanation.

Try using cv::cvtColor with an appropriate color code, in your case one of cv::COLOR_xxxA2xxx, most probably cv::COLOR_BGRA2BGR (or cv::COLOR_RGBA2RGB, doesn't matter since they're equal and only the alpha channel is removed). Or the other way around if you want to add alpha channel to the other image, which suits you best. I mostly use it to change an image to grayscale like so:

cv::Mat img_gray, image = imread(argv[1], cv::IMREAD_UNCHANGED);
cv::cvtColor(image, img_gray, cv::COLOR_BGR2GRAY);

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.