A Stitching Algorithm for Automated Surface Inspection of Rotationally
Symmetric Components
- URL: http://arxiv.org/abs/2012.00308v2
- Date: Tue, 27 Apr 2021 12:20:11 GMT
- Title: A Stitching Algorithm for Automated Surface Inspection of Rotationally
Symmetric Components
- Authors: Tobias Schlagenhauf, Tim Brander, Juergen Fleischer
- Abstract summary: This paper presents a novel approach to stitching surface images of rotationally symmetric parts.
It uses a feature-based stitching approach to create a distortion-free and true-to-life image from a video file.
The developed process enables, for example, condition monitoring without having to view many individual images.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: This paper provides a novel approach to stitching surface images of
rotationally symmetric parts. It presents a process pipeline that uses a
feature-based stitching approach to create a distortion-free and true-to-life
image from a video file. The developed process thus enables, for example,
condition monitoring without having to view many individual images. For
validation purposes, this will be demonstrated in the paper using the concrete
example of a worn ball screw drive spindle. The developed algorithm aims at
reproducing the functional principle of a line scan camera system, whereby the
physical measuring systems are replaced by a feature-based approach. For
evaluation of the stitching algorithms, metrics are used, some of which have
only been developed in this work or have been supplemented by test procedures
already in use. The applicability of the developed algorithm is not only
limited to machine tool spindles. Instead, the developed method allows a
general approach to the surface inspection of various rotationally symmetric
components and can therefore be used in a variety of industrial applications.
Deep-learning-based detection Algorithms can easily be implemented to generate
a complete pipeline for failure detection and condition monitoring on
rotationally symmetric parts.
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