Data-driven and Automatic Surface Texture Analysis Using Persistent
Homology
- URL: http://arxiv.org/abs/2110.10005v1
- Date: Tue, 19 Oct 2021 14:19:58 GMT
- Title: Data-driven and Automatic Surface Texture Analysis Using Persistent
Homology
- Authors: Melih C. Yesilli and Firas A. Khasawneh
- Abstract summary: We propose a Topological Data Analysis (TDA) based approach to classify the roughness level of synthetic surfaces.
We generate persistence diagrams that encapsulate information on the shape of the surface.
We then obtain feature matrices for each surface or profile using Carlsson coordinates, persistence images, and template functions.
- Score: 1.370633147306388
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Surface roughness plays an important role in analyzing engineering surfaces.
It quantifies the surface topography and can be used to determine whether the
resulting surface finish is acceptable or not. Nevertheless, while several
existing tools and standards are available for computing surface roughness,
these methods rely heavily on user input thus slowing down the analysis and
increasing manufacturing costs. Therefore, fast and automatic determination of
the roughness level is essential to avoid costs resulting from surfaces with
unacceptable finish, and user-intensive analysis. In this study, we propose a
Topological Data Analysis (TDA) based approach to classify the roughness level
of synthetic surfaces using both their areal images and profiles. We utilize
persistent homology from TDA to generate persistence diagrams that encapsulate
information on the shape of the surface. We then obtain feature matrices for
each surface or profile using Carlsson coordinates, persistence images, and
template functions. We compare our results to two widely used methods in the
literature: Fast Fourier Transform (FFT) and Gaussian filtering. The results
show that our approach yields mean accuracies as high as 97%. We also show
that, in contrast to existing surface analysis tools, our TDA-based approach is
fully automatable and provides adaptive feature extraction.
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