In several computer-aided diagnosis (CAD) applications of image processing, there is no sufficiently sensitive and specific method for determining what constitutes a normal versus an abnormal classification of a chest radiograph. In the case of lung nodule detection or in classifying the perfusion o
IDENTIFYING REGIONS OF INTEREST IN SPECTRA FOR CLASSIFICATION PURPOSES
β Scribed by C. ELLWEIN; S. DANAHER; U. JAGER
- Publisher
- Elsevier Science
- Year
- 2002
- Tongue
- English
- Weight
- 266 KB
- Volume
- 16
- Category
- Article
- ISSN
- 0888-3270
No coin nor oath required. For personal study only.
β¦ Synopsis
Distinguishing between separate classes of time-series data can often be simplified by using frequency-domain methods. Different states of a process can often result in different shapes and amplitudes in a spectral representation of the time series. The interpretation of the spectrum can be achieved in this case by identifying frequency regions which have a high discriminative power between the different classes, the so-called regions of interest (ROI). The discriminative power of two sequences is high if statistical or geometric parameters differ significantly between the classes. In this paper, a new approach for identifying these ROI, which makes use of image processing techniques is given. This new algorithm was developed in a research project with the aim of monitoring solenoid valves by analysing their mechanical vibration during switching on or off. Failure detection as developed in this project can be used for condition-based maintenance. However, it is anticipated that this new method can be generalised to many other similar types of classification problems.
π SIMILAR VOLUMES
## Abstract ## Purpose To automatically extract regions of interest (ROIs) and simultaneously preserve the anatomical characteristics of each individual, we developed a new atlasβbased method utilizing a pair of coregistered brain template and digital atlas. ## Materials and Methods Unlike the p