Recognition of objects is used for identification, classification, ver
ification, and inspection tasks in manufacturing. Neural networks are
well suited for this application. In this paper, an application of a b
ack-propagation neural network for the grouping of parts is presented.
The back-propagation neural network is provided with binary images de
scribing geometric part shapes, and it generates part families. To dec
rease the chance of reaching a local optimum and to speed up the compu
tation process, three parameters-bias, momentum, and learning rate-are
taken into consideration. The contribution of this paper is in design
of a neuro-based system to group parts. The network groups all the tr
aining and testing parts into part families with perfect accuracy. Per
formance of the system has been tested on a benchmark example and then
by experimenting with 60 parts.