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
fDate :
3/1/1995 12:00:00 AM
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;
Journal_Title :
Neural Networks, IEEE Transactions on