Super resolution is an essential tool in optics, especially on interstellar scales, due to physical laws restricting possible imaging resolution. We propose using optimal transport and entropy for super resolution applications. We prove that the reconstruction is accurate when sparsity is known and noise or distortion is small enough. We prove that the optimizer is stable and robust to noise and perturbations. We compare this method to a state of the art convolutional neural network and get similar results for much less computational cost and greater methodological flexibility.
翻译:超级分辨率是光学学中的一个重要工具,特别是在星际尺度上,因为物理法则限制可能的成像分辨率。我们建议使用最佳运输和星体用于超分辨率应用。我们证明当已知的宽度和噪音或扭曲程度都足够小时,重建是准确的。我们证明优化器对噪音和扰动是稳定而有力的。我们将该方法与艺术共生神经网络的状态进行比较,并得出类似的结果,以降低计算成本,提高方法的灵活性。