Both classical Fourier transform-based methods and neural network methods are widely used in image processing tasks. The former has better interpretability, whereas the latter often achieves better performance in practice. This paper introduces ButterflyNet2D, a regular CNN with sparse cross-channel connections. A Fourier initialization strategy for ButterflyNet2D is proposed to approximate Fourier transforms. Numerical experiments validate the accuracy of ButterflyNet2D approximating both the Fourier and the inverse Fourier transforms. Moreover, through four image processing tasks and image datasets, we show that training ButterflyNet2D from Fourier initialization does achieve better performance than random initialized neural networks.
翻译:古典Fourier变换法和神经网络方法都广泛用于图像处理任务,前者具有更好的解释性,而后者往往在实际中取得较好的性能。本文介绍蝴蝶网2D,这是固定的有线电视新闻网,具有稀少的跨通道连接。建议为蝴蝶网2D制定一种四丝网初始化战略,以接近Fourier变换。数字实验验证了蝴蝶网2D的准确性,使Fourier和Fourier的反向变换几乎一致。此外,通过四种图像处理任务和图像数据集,我们显示培训来自四丝网初始化的蝴蝶网2D的性能确实优于随机初始化神经网络。