Title :
Improved minimum distance classification with Gaussian outlier detection for industrial inspection
Author :
Toth, Daniel ; Aach, Til
Author_Institution :
Inst. for Signal Process., Luebeck Univ., Germany
Abstract :
A pattern recognition system used for industrial inspection has to be highly reliable and fast. The reliability is essential for reducing the cost caused by incorrect decisions, while speed is necessary for real-time operation. We address the problem of inspecting optical media like compact disks and digital versatile disks. As the disks are checked during production and the output of the production line has to be sufficiently high, the time available for the whole examination is very short, ie, about 1 sec per disk. In such real-time applications, the well-known minimum distance algorithm is often used as classifier. However, its main drawback is the unreliability when the training data are not well clustered in feature-space. Here we describe a method for off-line outlier detection, which cleans the training data set and yields substantially better classification results. It works on a statistical test basis. In addition, two improved versions of the minimum distance classifier, which both yield higher rates of correct classification with practically no speed-loss are presented. To evaluate the results, we compare them to the results obtained using a standard minimum distance classifier, a k-nearest neighbor classifier, and a fuzzy k-nearest neighbor classifier
Keywords :
Gaussian distribution; audio discs; automatic optical inspection; image classification; real-time systems; statistical analysis; video discs; Gaussian outlier detection; compact disks; digital versatile disks; industrial inspection; minimum distance classification; off-line outlier detection; optical media; pattern recognition system; real-time operation; reliability; statistical test; CD recording; Clustering algorithms; Costs; Electronic mail; Inspection; Optical signal processing; Pattern recognition; Production; Signal processing; Training data;
Conference_Titel :
Image Analysis and Processing, 2001. Proceedings. 11th International Conference on
Conference_Location :
Palermo
Print_ISBN :
0-7695-1183-X
DOI :
10.1109/ICIAP.2001.957073