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Superresolution of binary images with a nonlinear interpolative neural network

机译:非线性插值神经网络对二进制图像的超分辨率

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Superresolution is the process by which the bandwidth of a diffraction-limited spectrum is extended beyond the optical passband. Many algorithms exist that are capable of superresolution; however, most are iterative methods, which are ill suited for real-time operation. One approach that has been virtually ignored is the neural-network approach. We consider the feedforward architecture known as a multilayer perceptron and present results on simulated binary images blurred by a diffraction-limited, circular-aperture optical transfer function and sampled at the Nyquist rate. To avoid aliasing, the network performs as a nonlinear spatial interpolator while simultaneously extrapolating in the frequency domain.
机译:超分辨率是将衍射极限频谱的带宽扩展到光学通带之外的过程。存在许多能够超分辨率的算法。但是,大多数都是迭代方法,不适用于实时操作。实际上被忽略的一种方法是神经网络方法。我们考虑称为多层感知器的前馈体系结构,并在通过衍射极限圆孔光学传递函数模糊并以奈奎斯特速率采样的模拟二进制图像上呈现结果。为了避免混叠,网络充当非线性空间内插器,同时在频域中外推。

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