Abstract detail

286 / 2021-04-19 08:24:05
An adaptive edge detection method for filtering out background features in steel plate defect images
Edge detection, Steel plate image, Canny detector, OTSU, Target extraction
Signal Processing
Final Paper
Fafa Chen / Three Gorges University
Mengteng Cheng / Three Gorges University
Baojia Chen / Three Gorges University
Wenrong Xiao / Three Gorges University
Due to the diversity and complexity of image background, it is difficult to obtain the prominent image edge based on single traditional algorithms. In this paper, an improved adaptive edge detection method focusing on defective steel plate images is proposed, which can be applied to extract the target areas by filtering out background features. Firstly, the bilateral filter is adopted in the Canny detector instead of the traditional Gaussian filter to remove the noise in the image. Secondly, the improved Otsu method is applied to obtain the double threshold of the Canny detector. Finally, the characteristic indicators with prior knowledge are constructed to filter out the background features and achieve the extraction of target area. The feasibility and effectiveness of this method has been verified by applying the edge detection and extraction of defective steel plate images. The experimental results indicate that the proposed edge detector, which can filter out the background features effectively and the performance is better than traditional methods in terms of detection accuracy and robustness.

Countdown

  • 00

    Days

  • 00

    Hours

  • 00

    Minutes

  • 00

    Seconds

Important Dates

Abstract Submission Deadline:

 31st March 2021 15th April 2021

Extended Deadline: 1st Aug. 2022

 

Abstract Acceptance:

30th April  2021 Rollover

 

Full Paper Submission Deadline:

30th June 2021  14th July 2021

Extended Deadline: 15th Aug. 2022 

 

Notification of Acceptance:

15th August 2021 1st Sept. 2021

1st Sept. 2022

Contact Us

  Tel: 86-0532-6897 5191 (Ms Yuan)

  Mob: 184 5327 6561
  E-mailsecretariat@apvc2021.org
               organizer@apvc2021.org

Visitors