Implicit neural representations (INRs) have recently advanced numerous vision-related areas. INR performance depends strongly on the choice of the nonlinear activation function employed in its multilayer perceptron (MLP) network. A wide range of nonlinearities have been explored, but, unfortunately, current INRs designed to have high accuracy also suffer from poor robustness (to signal noise, parameter variation, etc.). Inspired by harmonic analysis, we develop a new, highly accurate and robust INR that does not exhibit this tradeoff. Wavelet Implicit neural REpresentation (WIRE) uses a continuous complex Gabor wavelet activation function that is well-known to be optimally concentrated in space-frequency and to have excellent biases for representing images. A wide range of experiments (image denoising, image inpainting, super-resolution, computed tomography reconstruction, image overfitting, and novel view synthesis with neural radiance fields) demonstrate that WIRE defines the new state of the art in INR accuracy, training time, and robustness.
翻译:INR的性能在很大程度上取决于如何选择其多层感应器(MLP)网络中使用的非线性活化功能。已经探索了广泛的非线性功能,但不幸的是,目前设计精度高的IRS也因强度差(信号噪声、参数变异等)而受到影响。在协调分析的启发下,我们开发了一个新的、高度准确和有力的IRR,它没有表现出这种平衡。Wavelet 隐性神经显示器(WIRE)使用一个连续的复杂加博波动功能,众所周知,它最适宜地集中于空间频率,并且具有极好的图像代表偏见。一系列广泛的实验(图像去除、图像油漆、超分辨率、计算成像、图像过度、与神经发光场进行新颖的合成)表明,WIRE定义了IRR精度、培训时间和坚固度方面的艺术新状态。