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Minimum fuel neural networks and their applications to overcomplete signal representations

机译:最小燃料神经网络及其在信号不完整表示中的应用

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The overcomplete signal representation (OSR) is a recently established adaptive signal representation method. As an adaptive signal representation method, the OSR means that a given signal is decomposed onto a number of optimal basis components, which are found from an overcomplete basis dictionary via some optimization algorithms, such as the matching pursuit (MP), method of frame (MOF) and basis pursuit (BP). Such ideas are actually very close to or exactly the same as solving a minimum fuel (MF) problem. The MF problem is a well-established minimum L/sub 1/-norm optimization model with linear constraints. The BP-based OSR proposed by Chen and Donoho is exactly the same model as the MF model. The work of Chen and Donoho showed that the MF model could be used as a generalized method for solving an OSR problem and it outperformed the MP and the MOF. In this paper, the neural implementation of the MF model and its applications to the OSR are presented. A new neural network, namely the minimum fuel neural network (MFNN), is constructed and its convergence in solving the MP problem is proven theoretically and validated experimentally. Compared with the implementation of the original BP, the MFNN does not double the scales of the problem and its convergence is independent of initial conditions. It is shown that the MFNN is promising for the application in the OSR's of various kinds of nonstationary signals with a high time-frequency resolution and feasibility of real-time implementation. As an extension, a two-dimensional (2-D) MF model suitable for image data compression is also proposed and its neural implementation is presented.
机译:超完备信号表示(OSR)是最近建立的自适应信号表示方法。作为一种自适应信号表示方法,OSR意味着将给定信号分解为多个最佳基础分量,这些分量是通过一些优化算法(例如匹配追踪(MP),帧法( MOF)和基础追求(BP)。这些想法实际上与解决最小燃油(MF)问题非常接近或完全相同。 MF问题是一个公认的具有线性约束的最小L / sub 1 /范数优化模型。 Chen和Donoho提出的基于BP的OSR与MF模型完全相同。 Chen和Donoho的工作表明,MF模型可以用作解决OSR问题的通用方法,其性能优于MP和MOF。本文介绍了MF模型的神经实现及其在OSR中的应用。建立了一种新的神经网络,即最小燃料神经网络(MFNN),并在理论上证明了其收敛性,并通过实验进行了验证。与原始BP的实现相比,MFNN不会使问题的范围加倍,并且其收敛与初始条件无关。结果表明,MFNN具有很高的时频分辨率和实时实现的可行性,有望用于各种非平稳信号的OSR中。作为扩展,还提出了适用于图像数据压缩的二维(2-D)MF模型,并提出了其神经实现方法。

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