Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Render, Don't Decode: Weight-Space World Models with Latent Structural Disentanglement

About

Training world models on vast quantities of unlabelled videos is a critical step toward fully autonomous intelligence. However, the prevailing paradigm of encoding raw pixels into opaque latent spaces and relying on heavy decoders for reconstruction leaves these models computationally expensive and uninterpretable. We address this problem by introducing NOVA, a world modelling framework that represents the system state as the weights and biases of an auxiliary coordinate-based implicit neural representation (INR). This structured representation is analytically rendered, which eliminates the decoder bottleneck while conferring compactness, portability, and zero-shot super-resolution. Furthermore, like most latent action models, NOVA can be distilled into a context-dependent video generator via an action-matching objective. Surprisingly, without resorting to auxiliary losses or adversarial objectives, NOVA can disentangle structural scene components such as background, foreground, and inter-frame motion, enabling users to edit either content or dynamics without compromising the other. We validate our framework on several challenging datasets, achieving strong controllable forecasting while operating on a single consumer GPU at $\sim$40M parameters. Ultimately, structured representations like INRs not only enhance our understanding of latent dynamics but also pave the way for immersive and customisable virtual experiences.

Roussel Desmond Nzoyem, Mauro Comi• 2026

Related benchmarks

TaskDatasetResultRank
Super-ResolutionWeatherBench native 32 x 64 (test)
W10.135
3
Long-horizon Identity-ConsistencyMoving MNIST sequences 54, 57 T=1000 frames
Median Wasserstein Distance (W1)0.1222
3
Showing 2 of 2 rows

Other info

Follow for update