AI RESEARCH

From Noise to Control: Parameterized Diffusion Policies

arXiv CS.AI

ArXi:2606.00336v1 Announce Type: new We propose Parameterized Diffusion Policy (PDP), a framework for learning diffusion policies conditioned on low-dimensional, continuous parameters embedded in a learned behavior manifold. By constructing this manifold so that distances between latent representations reflect the semantic similarity between physical trajectories, we transform diffusion from a mechanism for stochastic diversity into a precise and optimizable tool for behavior steering.