Sensors (Mar 2019)

Segmentation of Online Ferrograph Images with Strong Interference Based on Uniform Discrete Curvelet Transformation

  • Leng Han,
  • Song Feng,
  • Guang Qiu,
  • Jiufei Luo,
  • Hong Xiao,
  • Junhong Mao

DOI
https://doi.org/10.3390/s19071546
Journal volume & issue
Vol. 19, no. 7
p. 1546

Abstract

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Through real-time acquisition of the visual characteristics of wear debris in lube oil, an on-line visual ferrograph (OLVF) achieves online monitoring of equipment wear in practice. However, since a large number of bubbles can exist in lube oil and appear as a dynamically changing interference shadow in OLVF ferrograms, traditional algorithms may easily misidentify the interference shadow as wear debris, resulting in a large error in the extracted wear debris characteristic. Based on this possibility, a jam-proof uniform discrete curvelet transformation (UDCT)-based method for the binarization of wear debris images was proposed. Through multiscale analysis of the OLVF ferrograms using UDCT and nonlinear transformation of UDCT coefficients, low-frequency suppression and high-frequency denoising of wear debris images were conducted. Then, the Otsu algorithm was used to achieve binarization of wear debris images under strong interference influence.

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