DSPNet: A Lightweight Dilated Convolution Neural Networks for Spectral Deconvolution With Self-Paced Learning

In the fields of industry research, infrared spectrometers are widely used in diverse applications. However, the spectrum often suffers from band overlap and random noise due to the distortion caused by the point spread function, especially for aging instruments. The problem of reconstructing the clear spectrum from the degraded spectrum is called spectrum deconvolution. Traditional partial differential equation (PDE) methods rely on distribution assumptions in the reconstructed process. This restriction makes PDE methods sensitive to tackle complex instrumental broadening effect in the dispersive IR spectrometers. Also, we need to spend much time setting the parameters of PDE models manually. These problems intuitively degrade the performances of PDE methods. In this article, we propose an end-to-end neural network framework for spectral deconvolution problem. The novelty of this article lies in its strong robustness from dilated deconvolution and self-paced learning procedure to challenge the complicated degraded spectra. Actually, the deconvolution problem is tailored to a dense prediction problem in this article. Inspired by the extensive use and excellent effects of dilated convolutions in dense prediction, a lightweight dilated convolution module is given to detect the overlaps of degraded spectra. Experimental results demonstrate that the proposed solution has an outstanding performance against many other approaches. Such improvements have the potential to facilitate industrial applications and further exploration of an unknown chemical mixture. Our framework has a good performance on feature extracting and spectrum reconstruction, even in the case of low signal-to-noise ratio.

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