Quaternion neural network with geometrical operators 论文
2004Journal of Intelligent & Fuzzy Systems引用 215
Neural Networks and ApplicationsImage and Video StabilizationImage and Signal Denoising Methods
摘要
Quaternion neural networks are models in which computations of the neurons are based on quaternions, the four-dimensional equivalents of imaginary numbers. This paper shows by experiments that the quaternion-version of the Back Propagation (BP) algorithm achieves correct geometrical transformations in three-dimensional space, as well as in color space for an image compression problem, whereas real-valued BP algorithms fail. The quaternion neural network also performs superior in terms of convergence speed to a real-valued neural network with respect to the 3-bit parity check problem, as simulations show.