Fault classification via energy based features of two-dimensional image data
- Authors
- Lim, Munwon; Vidakovic, Brani; Bae, Suk Joo
- Issue Date
- Jun-2023
- Publisher
- Marcel Dekker Inc.
- Keywords
- Discrete wavelet packet transform; fractional Brownian field; image classification; long-range dependence; self-similarity; spectral analysis
- Citation
- Communications in Statistics - Theory and Methods, v.52, no.11, pp 3939 - 3959
- Pages
- 21
- Indexed
- SCIE
SCOPUS
- Journal Title
- Communications in Statistics - Theory and Methods
- Volume
- 52
- Number
- 11
- Start Page
- 3939
- End Page
- 3959
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/197109
- DOI
- 10.1080/03610926.2021.1982986
- ISSN
- 0361-0926
1532-415X
- Abstract
- Automated anomaly detection is the prerequisite to minimize human errors and costs caused by manual inspection. Recently, image-based anomaly detections have gained more attention by widely adopting machine vision systems and computer-aided detections. We propose a classification method using spectral features based on 2D discrete wavelet packet transform under the hierarchical structure of wavelet energies. By capturing the self-similar and long-range dependent characteristics of 2D fractional Brownian field (fBf), wavelet packet spectra are derived to construct a linear model representing the relationship between wavelet energies and resolution levels. 2D DWPT-based energy features effectively preserve irregular oscillations in original images at high-frequency domains as well as at low-frequency domains under a pyramidal structure. In comparison with the existing 2D discrete wavelet transform method, the proposed method shows a potential in efficiently classifying normal and abnormal image data in a numerical example and a real industrial application.
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