We present MR-Net, a general architecture for multiresolution neural networks, and a framework for imaging applications based on this architecture. Our coordinate-based networks are continuous both in space and in scale as they are composed of multiple stages that progressively add finer details. Besides that, they are a compact and efficient representation. We show examples of multiresolution image representation and applications to texturemagnification, minification, and antialiasing. This document is the extended version of the paper [PNS+22]. It includes additional material that would not fit the page limitations of the conference track for publication.
翻译:我们提出了多分辨率神经网络的总结构MR-Net,以及基于这一结构的成像应用框架。我们的基于协调的网络在空间和规模上都是连续的,因为它们由多个阶段组成,逐渐增加更细的细节。此外,它们是紧凑和高效的表达方式。我们展示了多分辨率图像表达方式和用于纹理放大、美化和反丑化的范例。本文件是文件[PNS+22]的扩展版。它包括不符合会议出版轨道页数限制的其他材料。