English

Exploring Temporal Representation in Neural Processes for Multimodal Action Prediction

Robotics 2026-04-10 v1 Artificial Intelligence

Abstract

Inspired by the human ability to understand and predict others, we study the applicability of Conditional Neural Processes (CNP) to the task of self-supervised multimodal action prediction in robotics. Following recent results regarding the ontogeny of the Mirror Neuron System (MNS), we focus on the preliminary objective of self-actions prediction. We find a good MNS-inspired model in the existing Deep Modality Blending Network (DMBN), able to reconstruct the visuo-motor sensory signal during a partially observed action sequence by leveraging the probabilistic generation of CNP. After a qualitative and quantitative evaluation, we highlight its difficulties in generalizing to unseen action sequences, and identify the cause in its inner representation of time. Therefore, we propose a revised version, termed DMBN-Positional Time Encoding (DMBN-PTE), that facilitates learning a more robust representation of temporal information, and provide preliminary results of its effectiveness in expanding the applicability of the architecture. DMBN-PTE figures as a first step in the development of robotic systems that autonomously learn to forecast actions on longer time scales refining their predictions with incoming observations.

Keywords

Cite

@article{arxiv.2604.08418,
  title  = {Exploring Temporal Representation in Neural Processes for Multimodal Action Prediction},
  author = {Marco Gabriele Fedozzi and Yukie Nagai and Francesco Rea and Alessandra Sciutti},
  journal= {arXiv preprint arXiv:2604.08418},
  year   = {2026}
}

Comments

Submitted to the AIC 2023 (9th International Workshop on Artificial Intelligence and Cognition)

R2 v1 2026-07-01T12:01:28.709Z