空 挡 广 告 位 | 空 挡 广 告 位

PINs: Progressive Implicit Networks for Multi-Scale Neural Representations

Note: We don't have the ability to review paper

PubDate: Jul 2022

Teams: Imperial College London;Meta

Writers: Zoe Landgraf, Alexander Sorkine-Hornung, Ricardo Silveira Cabral

PDF: PINs: Progressive Implicit Networks for Multi-Scale Neural Representations

Abstract

Multi-layer perceptrons (MLP) have proven to be effective scene encoders when combined with higher-dimensional projections of the input, commonly referred to as positional encoding. However, scenes with a wide frequency spectrum remain a challenge: choosing high frequencies for positional encoding introduces noise in low structure areas, while low frequencies result in poor fitting of detailed regions. To address this, we propose a progressive positional encoding, exposing a hierarchical MLP structure to incremental sets of frequency encodings. Our model accurately reconstructs scenes with wide frequency bands and learns a scene representation at progressive level of detail without explicit per-level supervision. The architecture is modular: each level encodes a continuous implicit representation that can be leveraged separately for its respective resolution, meaning a smaller network for coarser reconstructions. Experiments on several 2D and 3D datasets show improvements in reconstruction accuracy, representational capacity and training speed compared to baselines.

您可能还喜欢...

Paper