DocumentCode
1242446
Title
Object recognition of one-DOF tools by a back-propagation neural net
Author
Kim, Hongbong ; Nam, Kwanghee
Author_Institution
Agency for Defense Dev., Daejeon, South Korea
Volume
6
Issue
2
fYear
1995
fDate
3/1/1995 12:00:00 AM
Firstpage
484
Lastpage
487
Abstract
Considers the recognition of industrial tools which have one degree of freedom (DOF). In the case of pliers, the shape varies as the jaw angle varies, and a feature vector made from the boundary image varies with it. For a pattern classifier that is able to classify objects without regard to angle variation, we have utilized a backpropagation neural net. Feature vectors made from Fourier descriptors of boundary images by truncating the high-frequency components were used as inputs to the neural net for training and recognition. In our experiments, the backpropagation neural net outperforms both the minimum-mean-distance and the nearest-neighbor rules which are widely used in pattern recognition. Performances are also compared under noisy environments and for some untrained objects
Keywords
backpropagation; feature extraction; image classification; object recognition; tools; Fourier descriptors; backpropagation neural net; boundary image; feature vector; high-frequency component truncation; jaw angle variation; minimum-mean-distance rule; nearest-neighbor rule; noisy environments; object recognition; one degree-of-freedom industrial tools; pattern classifier; pattern recognition; performance; pliers; training; untrained objects; variable shape; Data mining; Feature extraction; Image edge detection; Neural networks; Object recognition; Pattern recognition; Robot vision systems; Shape; Sorting; Testing;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.363483
Filename
363483
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