AI RESEARCH

PEPS: Positional Encoding Projected Sampling -- Extended

arXiv CS.LG

ArXi:2604.24167v1 Announce Type: cross Implicit neural representations (INRs) are increasingly being used as tools to map coordinates to signals, encompassing applications from neural fields to texture compression, shape representations, and beyond. Most INR methods are based on using high-dimensional projections of the initial coordinates through encoders such as grid or positional encoding. Nevertheless, positional encoding is often insufficient and grids, as we show in this paper, require high resolution for being able to learn.