Investigating the Relationship between the Weighted Figure of Merit and Rosin's Measure
Bimal Kumar Ray

TL;DR
This study investigates whether the weighted figure of merit can replace Rosin's measure for polygonal approximation quality assessment, concluding they are mathematically and statistically uncorrelated, thus not interchangeable.
Contribution
The paper provides a theoretical, experimental, and statistical analysis demonstrating the independence of the weighted figure of merit and Rosin's measure.
Findings
The two measures are mathematically independent.
Experimental results show no correlation between the measures.
One measure cannot substitute the other for assessing approximation quality.
Abstract
Many studies have been conducted to solve the problem of approximating a digital boundary by piece straight-line segments for the further processing required in computer vision applications. The authors of these studies compared their schemes to determine the best one. The initial measure used to assess the goodness of fit of a polygonal approximation was the figure of merit. Later,it was noted that this measure was not an appropriate metric for a valid reason which is why Rosin-through mathematical analysis-introduced a measure called merit. However,this measure involves an optimal scheme of polygonal approximation,so it is time-consuming to compute it to assess the goodness of fit of an approximation. This led many researchers to use a weighted figure of merit as a substitute for Rosin's measure to compare sub optimal schemes. An attempt is made in this communication to investigate…
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Taxonomy
TopicsDigital Image Processing Techniques · Image and Object Detection Techniques · Medical Image Segmentation Techniques
