Outlier Detection Algorithm for Circle Fitting
Ahmet G\"okhan Poyraz

TL;DR
This paper presents a novel polar coordinate-based outlier detection algorithm that improves the accuracy of circle fitting in noisy industrial measurement scenarios, outperforming existing methods.
Contribution
The study introduces the PCOD algorithm, a new outlier detection method using polar coordinates that enhances circle fitting accuracy in noisy data environments.
Findings
The proposed method outperforms ten circle fitting algorithms in accuracy.
It effectively detects and removes outliers in noisy point sets.
Application to industrial washer diameter measurement demonstrates practical benefits.
Abstract
Circle fitting methods are extensively utilized in various industries, particularly in quality control processes and design applications. The effectiveness of these algorithms can be significantly compromised when the point sets to be predicted are noisy. To mitigate this issue, outlier detection and removal algorithms are often applied before the circle fitting procedure. This study introduces the Polar Coordinate-Based Outlier Detection (PCOD) algorithm, which can be effectively employed in circle fitting applications. In the proposed approach, the point set is first transformed into polar coordinates, followed by the calculation of both local and global standard deviations. Outliers are then identified by comparing local mean values with the global standard deviation. The practicality and efficiency of the proposed method are demonstrated by focusing on the high-precision diameter…
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