Metal Abrasive Image Segmentation Algorithm Based on K-means Clustering

Authors

  • Pengpeng Zhang
  • Wei Wu
  • Yu Li
  • Yukun Wang

DOI:

https://doi.org/10.54097/ajst.v7i2.12328

Keywords:

Metal abrasive images; Image segmentation; K-means clustering.

Abstract

Metal abrasive image segmentation is one of the important image processing tasks in the industrial field. However, due to the complex color and texture characteristics of metal abrasive images, as well as difficult factors such as noise and lighting changes, traditional image segmentation methods often fail to achieve high accuracy and stability. In order to solve this problem, a metal abrasive image segmentation algorithm based on K-means clustering is proposed. The algorithm applies the K-means clustering algorithm to the image segmentation of metal abrasive particles, and realizes the separation of metal abrasive grains from the background by clustering the color features of image pixels. Experimental results show that our algorithm shows good accuracy and stability in the metal abrasive image segmentation task, and has high efficiency. Therefore, the algorithm provides an accurate and efficient method for metal abrasive image segmentation.

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Published

27-09-2023

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Section

Articles

How to Cite

Zhang, P., Wu, W., Li, Y., & Wang, Y. (2023). Metal Abrasive Image Segmentation Algorithm Based on K-means Clustering. Academic Journal of Science and Technology, 7(2), 227-231. https://doi.org/10.54097/ajst.v7i2.12328