Title :
Threshold Complex-Valued Neural Associative Memory
Author_Institution :
Frankfurt Inst. for Adv. Studies, Johann Wolfgang Goethe Univ., Frankfurt am Main, Germany
Abstract :
In this brief, threshold complex-valued neural associative memory is proposed for information retrieval. The introduction of threshold improves network performance by excluding rotated patterns from spurious memories. A design method for constructing different types of network is developed based on complex matrix decomposition, which is capable of designing nonthreshold, threshold, non-Hermitian, and Hermitian networks. Further, we illustrate the performance of the proposed method by reconstructing noisy 256 grayscale and true color images. The results show that constructed networks can work efficiently, threshold networks have better performance than nonthreshold ones and networks with small asymmetry in weight matrix function as well as Hermitian ones.
Keywords :
image colour analysis; image reconstruction; image retrieval; matrix decomposition; recurrent neural nets; Hermitian network; complex matrix decomposition; design method; information retrieval; noisy grayscale image reconstruction; nonHermitian network; nonthreshold network; threshold complex-valued neural associative memory; threshold network; true color image reconstruction; Associative memory; Color; Gray-scale; Matrix decomposition; Neurons; Training; Vectors; Complex matrix decomposition; complex-valued neural associative memory (CVNAM); spurious memory; threshold; threshold.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2280573