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GC Snakes: An Efficient and Robust Segmentation Model for Hot Forging Images

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2024 Aug 10
PMID 39123869
Authors
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Abstract

Machine vision is a desirable non-contact measurement method for hot forgings, as image segmentation has been a challenging issue in performance and robustness resulting from the diversity of working conditions for hot forgings. Thus, this paper proposes an efficient and robust active contour model and corresponding image segmentation approach for forging images, by which verification experiments are conducted to prove the performance of the segmentation method by measuring geometric parameters for forging parts. Specifically, three types of continuity parameters are defined based on the geometric continuity of equivalent grayscale surfaces for forging images; hence, a new image force and external energy functional are proposed to form a new active contour model, Geometric Continuity Snakes (GC Snakes), which is more percipient to the grayscale distribution characteristics of forging images to improve the convergence for active contour robustly; additionally, a generating strategy for initial control points for GC Snakes is proposed to compose an efficient and robust image segmentation approach. The experimental results show that the proposed GC Snakes has better segmentation performance compared with existing active contour models for forging images of different temperatures and sizes, which provides better performance and efficiency in geometric parameter measurement for hot forgings. The maximum positioning and dimension errors by GC Snakes are 0.5525 mm and 0.3868 mm, respectively, compared with errors of 0.7873 mm and 0.6868 mm by the Snakes model.

References
1.
Udupa J, Wei L, Samarasekera S, Miki Y, van Buchem M, Grossman R . Multiple sclerosis lesion quantification using fuzzy-connectedness principles. IEEE Trans Med Imaging. 1997; 16(5):598-609. DOI: 10.1109/42.640750. View

2.
Hojjatoleslami S, Kittler J . Region growing: a new approach. IEEE Trans Image Process. 2008; 7(7):1079-84. DOI: 10.1109/83.701170. View

3.
Yin X, Sun L, Fu Y, Lu R, Zhang Y . U-Net-Based Medical Image Segmentation. J Healthc Eng. 2022; 2022:4189781. PMC: 9033381. DOI: 10.1155/2022/4189781. View

4.
Zhang J . The mean field theory in EM procedures for blind Markov random field image restoration. IEEE Trans Image Process. 1993; 2(1):27-40. DOI: 10.1109/83.210863. View

5.
Zhou Y, Chen H, Li Y, Liu Q, Xu X, Wang S . Multi-task learning for segmentation and classification of tumors in 3D automated breast ultrasound images. Med Image Anal. 2021; 70:101918. DOI: 10.1016/j.media.2020.101918. View