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Image Edge Detection Algorithm Based on Fuzzy Radial Basis Neural Network

Author

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  • Lin Feng
  • Jian Wang
  • Chao Ding

Abstract

Digital image processing technology is widely used in production and life, and digital images play a pivotal role in the ever-changing technological development. Noise can affect the expression of image information. The edge is the reflection of the main structure and contour of the image, and it is also the direct interpretation of image understanding and the basis for further segmentation and recognition. Therefore, suppressing noise and improving the accuracy of edge detection are important aspects of image processing. To address these issues, this paper presents a new detection algorithm combined with information fusion based on the existing image edge detection techniques, and the algorithm is studied from two aspects of fuzzy radial basis fusion discrimination, in terms of preprocessing algorithm, comparing the denoising effect of mean and median filters with different template sizes on paper images with added noise, and selecting the improved median filter denoising, comparing different operator edge detection. The effect of image edge detection contour is finally selected as the Sobel operator for edge detection; the binarized image edge detection contour information is found as the minimum outer rectangle and labeled, and then, the original paper image is scanned line by line to segment the target image edge region. The image edge detection algorithm based on fuzzy radial basis fuser can not only speed up the image preprocessing, meet the real-time detection, and reduce the amount of data processed by the upper computer but also can accurately identify five image edge problems including folds and cracks, which has good application prospects.

Suggested Citation

  • Lin Feng & Jian Wang & Chao Ding, 2021. "Image Edge Detection Algorithm Based on Fuzzy Radial Basis Neural Network," Advances in Mathematical Physics, Hindawi, vol. 2021, pages 1-9, December.
  • Handle: RePEc:hin:jnlamp:4405657
    DOI: 10.1155/2021/4405657
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