Keywords: Level of Detail; Progressive Transmission; Implicit Neural Representation; Multi-Layer Perceptron
TL;DR: We introduce the Tailed Multi-Layer Perceptron (T-MLP) for level-of-detail signal representation and progressive transmission.
Abstract: Level-of-detail (LoD) representation is critical for efficiently modeling and transmitting various types of signals, such as images and 3D shapes. In this work, we propose a novel network architecture that enables LoD signal representation. Our approach builds on a modified Multi-Layer Perceptron (MLP), which inherently operates at a single scale and thus lacks native LoD support. Specifically, we introduce the Tailed Multi-Layer Perceptron (T-MLP), which extends the MLP by attaching an output branch, also called tail, to each hidden layer. Each tail refines the residual between the current prediction and the ground-truth signal, so that the accumulated outputs across layers correspond to the target signals at different LoDs, enabling multi-scale modeling with supervision from only a single-resolution signal. Extensive experiments demonstrate that our T-MLP outperforms existing neural LoD baselines across diverse signal representation tasks.
Primary Area: applications to computer vision, audio, language, and other modalities
Submission Number: 14983
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