OpenCV
3.4.15
Open Source Computer Vision
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Any grayscale image can be viewed as a topographic surface where high intensity denotes peaks and hills while low intensity denotes valleys. You start filling every isolated valleys (local minima) with different colored water (labels). As the water rises, depending on the peaks (gradients) nearby, water from different valleys, obviously with different colors will start to merge. To avoid that, you build barriers in the locations where water merges. You continue the work of filling water and building barriers until all the peaks are under water. Then the barriers you created gives you the segmentation result. This is the "philosophy" behind the watershed. You can visit the CMM webpage on watershed to understand it with the help of some animations.
But this approach gives you oversegmented result due to noise or any other irregularities in the image. So OpenCV implemented a marker-based watershed algorithm where you specify which are all valley points are to be merged and which are not. It is an interactive image segmentation. What we do is to give different labels for our object we know. Label the region which we are sure of being the foreground or object with one color (or intensity), label the region which we are sure of being background or non-object with another color and finally the region which we are not sure of anything, label it with 0. That is our marker. Then apply watershed algorithm. Then our marker will be updated with the labels we gave, and the boundaries of objects will have a value of -1.
Below we will see an example on how to use the Distance Transform along with watershed to segment mutually touching objects.
Consider the coins image below, the coins are touching each other. Even if you threshold it, it will be touching each other.
We start with finding an approximate estimate of the coins. For that, we can use the Otsu's binarization.
Now we need to remove any small white noises in the image. For that we can use morphological opening. To remove any small holes in the object, we can use morphological closing. So, now we know for sure that region near to center of objects are foreground and region much away from the object are background. Only region we are not sure is the boundary region of coins.
So we need to extract the area which we are sure they are coins. Erosion removes the boundary pixels. So whatever remaining, we can be sure it is coin. That would work if objects were not touching each other. But since they are touching each other, another good option would be to find the distance transform and apply a proper threshold. Next we need to find the area which we are sure they are not coins. For that, we dilate the result. Dilation increases object boundary to background. This way, we can make sure whatever region in background in result is really a background, since boundary region is removed. See the image below.
The remaining regions are those which we don't have any idea, whether it is coins or background. Watershed algorithm should find it. These areas are normally around the boundaries of coins where foreground and background meet (Or even two different coins meet). We call it border. It can be obtained from subtracting sure_fg area from sure_bg area.
We use the function: cv.distanceTransform (src, dst, distanceType, maskSize, labelType = cv.CV_32F)
src | 8-bit, single-channel (binary) source image. |
dst | output image with calculated distances. It is a 8-bit or 32-bit floating-point, single-channel image of the same size as src. |
distanceType | type of distance(see cv.DistanceTypes). |
maskSize | size of the distance transform mask, see (cv.DistanceTransformMasks). |
labelType | type of output image. It can be cv.CV_8U or cv.CV_32F. Type cv.CV_8U can be used only for the first variant of the function and distanceType == DIST_L1. |
In the thresholded image, we get some regions of coins which we are sure of coins and they are detached now. (In some cases, you may be interested in only foreground segmentation, not in separating the mutually touching objects. In that case, you need not use distance transform, just erosion is sufficient. Erosion is just another method to extract sure foreground area, that's all.)
Now we know for sure which are region of coins, which are background and all. So we create marker (it is an array of same size as that of original image, but with int32 datatype) and label the regions inside it. The regions we know for sure (whether foreground or background) are labelled with any positive integers, but different integers, and the area we don't know for sure are just left as zero. For this we use cv.connectedComponents(). It labels background of the image with 0, then other objects are labelled with integers starting from 1.
But we know that if background is marked with 0, watershed will consider it as unknown area. So we want to mark it with different integer. Instead, we will mark unknown region, defined by unknown, with 0.
Now our marker is ready. It is time for final step, apply watershed. Then marker image will be modified. The boundary region will be marked with -1.
We use the function: cv.connectedComponents (image, labels, connectivity = 8, ltype = cv.CV_32S)
image | the 8-bit single-channel image to be labeled. |
labels | destination labeled image(cv.CV_32SC1 type). |
connectivity | 8 or 4 for 8-way or 4-way connectivity respectively. |
ltype | output image label type. Currently cv.CV_32S and cv.CV_16U are supported. |
We use the function: cv.watershed (image, markers)
image | input 8-bit 3-channel image. |
markers | input/output 32-bit single-channel image (map) of markers. It should have the same size as image . |