Abstract
AbstractThe manufacture of In Vitro Fertilization (IVF) needles is subject to the most stringent quality demands. This makes automated inspection challenging due to difficulty in reliably classifying conforming and non-conforming (defective) products due to factors including multidimensional variation of their tip geometry and the lack of an explicit quality standard. In addition, developing an IVF needle image dataset, which broadly contains the visual characteristics of qualified and defective products, is difficult without commissioning large and costly production runs. The most important original contribution of this work is a new solution to investigate and quantify the uncertainty in the quality standard of IVF needles by integrating inter-disciplinary techniques. This work utilizes a low-cost, virtual dataset of synthetic images, generated by the automated photo-realistic rendering of a three-dimensional (3D) parametric model to simulate manufacturing variation. Then, the unknown numerical (critical) quality thresholds are obtained by estimating the relationship between quality response and measurement predictors using an Ordinal Logistic Regression (OLR) algorithm on the synthetic images. The fitted models exhibited increased overall predictive accuracy of up to 11.02% than the machine learning models (available in MATLAB) and could provide objective guidance on classifying specific quality aspects of a product.
Funder
Australian Research Council
Royal Melbourne Institute of Technology
Publisher
Springer Science and Business Media LLC
Subject
Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Software,Control and Systems Engineering
Reference52 articles.
1. Oh S, Cha J, Kim D, Jeong J (2020) Quality inspection of casting product using CAE and CNN. 4th International Conference on Imaging, Signal Processing and Communications (ICISPC). IEEE, pp 34–38
2. Aguilar-Torres MA, Argüelles-Cruz AJ, Yánez-Márquez C (2008) A real time artificial vision implementation for quality inspection of industrial products. IEEE Electronics, Robotics and Automotive Mechanics Conference (CERMA’08) 277–282
3. Campbell SL, Gear CW (1995) The index of general nonlinear DAES. Numer Math 72(2):173–196
4. Jia J (2009) A machine vision application for industrial assembly inspection. Second international conference on machine vision, IEEE 172–176
5. Aisyah L (2012) Comparing the performance of ordinal logistic regression and artificial Neural network when analyzing ordinal data. Ph.D. thesis, Oklahoma State University