A novel strategy to automated classification is introduced which exploits a fully trained dynamical system to steer items belonging to different categories toward distinct asymptotic attractors. These latter are incorporated into the model by taking advantage of the spectral decomposition of the operator that rules the linear evolution across the processing network. Non-linear terms act for a transient and allow to disentangle the data supplied as initial condition to the discrete dynamical system, shaping the boundaries of different attractors. The network can be equipped with several memory kernels which can be sequentially activated for serial datasets handling. Our novel approach to classification, that we here term Recurrent Spectral Network (RSN), is successfully challenged against a simple test-bed model, created for illustrative purposes, as well as a standard dataset for image processing training.
翻译:采用新的自动化分类战略,利用经过充分训练的动态系统,将属于不同类别的物品引导到不同的非活性吸引器上,这些吸引器通过利用操作员的光谱分解而被纳入模型,操作员负责在整个处理网络中控制线性演变过程。非线性术语是短暂的,可以将作为初始条件提供的数据分解到离散的动态系统,从而决定不同吸引器的边界。网络可以配备若干内存内核,这些内核可按顺序启动,用于处理序列数据集。我们的新分类方法,即我们这里称为常务光谱网络(RSN),成功地受到为说明目的建立的简单测试床模型的挑战,以及图像处理培训的标准数据集的挑战。