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Hello friends welcome to the video lecture series on digital image processing, Im Dr Dafda and in this 50th video class of DIP, well study Edge linking and Boundary detection, Hough transform and its implementation in MATLAB. Edge linking means joining the edges in the previous video class we saw how to detect the edges but there may be breaks in the edges that we detect and hence they need to be joined and half transform is a global method of edge linking that was presented by Huff in 1962 so let us start in the previous video class we saw that the gradient operators like Robert Sobel private laplation of gaussian Etc and as the edges but when we Implement these filters practically there are usually breaks in lines and due to this reason these are generally followed by linking procedures to assemble H pixels into meaningful edges so this is the figure that we saw in the previous video class here the horizontal lines or edges are detected as we can see