OpenCV
4.0.1
Open Source Computer Vision
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Here, the matter is straight forward. If pixel value is greater than a threshold value, it is assigned one value (may be white), else it is assigned another value (may be black).
We use the function: cv.threshold (src, dst, thresh, maxval, type)
src | input array. |
dst | output array of the same size and type and the same number of channels as src. |
thresh | threshold value. |
maxval | maximum value to use with the cv.THRESH_BINARY and cv.THRESH_BINARY_INV thresholding types. |
type | thresholding type(see cv.ThresholdTypes). |
thresholding type - OpenCV provides different styles of thresholding and it is decided by the fourth parameter of the function. Different types are:
In the previous section, we used a global value as threshold value. But it may not be good in all the conditions where image has different lighting conditions in different areas. In that case, we go for adaptive thresholding. In this, the algorithm calculate the threshold for a small regions of the image. So we get different thresholds for different regions of the same image and it gives us better results for images with varying illumination.
We use the function: cv.adaptiveThreshold (src, dst, maxValue, adaptiveMethod, thresholdType, blockSize, C)
src | source 8-bit single-channel image. |
dst | destination image of the same size and the same type as src. |
maxValue | non-zero value assigned to the pixels for which the condition is satisfied |
adaptiveMethod | adaptive thresholding algorithm to use. |
thresholdType | thresholding type that must be either cv.THRESH_BINARY or cv.THRESH_BINARY_INV. |
blockSize | size of a pixel neighborhood that is used to calculate a threshold value for the pixel: 3, 5, 7, and so on. |
C | constant subtracted from the mean or weighted mean (see the details below). Normally, it is positive but may be zero or negative as well. |
adaptiveMethod - It decides how thresholding value is calculated: