Abstract

Abstract Image segmentation has always been a research hotspot in computer vision. Traditional image segmentation is based on pixels, and it is difficult to achieve the desired target effect. The manual segmentation method is too cumbersome and has limited precision. There is a certain degree of instability in the selection of interactively segmented pixels, which will affect the final segmentation results to a large extent. In this paper, the superpixel block generated by the SLIC algorithm is used to preprocess the image, and then based on the Graph cut algorithm, the selection of seed points is improved, and the pixels of the background area are attempted to be optimized to obtain a more excellent target point sample. On top of the image segmentation, the foreground object is further divided with a frame, the pixels in the background are optimized, and the advantages of other segmentation algorithms are extracted to achieve the goal of global optimization, and interactive image segmentation is achieved.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call