Donald PrévostMichel DoucetAlain BergeronLuc VeilleuxPaul C. ChevretteDenis Gingras
A rotation, scale and translation invariant pattern recognition technique is proposed.It is based on Fourier- Mellin Descriptors (FMD). Each FMD is taken as an independent feature of the object, and a set of those features forms a signature. FMDs are naturally rotation invariant. Translation invariance is achieved through pre- processing. A proper normalization of the FMDs gives the scale invariance property. This approach offers the double advantage of providing invariant signatures of the objects, and a dramatic reduction of the amount of data to process. The compressed invariant feature signature is next presented to a multi-layered perceptron neural network. This final step provides some robustness to the classification of the signatures, enabling good recognition behavior under anamorphically scaled distortion. We also present an original feature extraction technique, adapted to optical calculation of the FMDs. A prototype optical set-up was built, and experimental results are presented.
Henri H. ArsenaultYuan-Neng HsuKatarzyna Chałasińska-MacukowYusheng Yang
М.Г. НаходкінYurij S. MusatenkoVitalij N. Kurashov
Yueh OuyangPen-Wen ChenHon-Fai Yau