English

Any2Any: Incomplete Multimodal Retrieval with Conformal Prediction

Computer Vision and Pattern Recognition 2024-11-27 v2 Information Retrieval Multimedia

Abstract

Autonomous agents perceive and interpret their surroundings by integrating multimodal inputs, such as vision, audio, and LiDAR. These perceptual modalities support retrieval tasks, such as place recognition in robotics. However, current multimodal retrieval systems encounter difficulties when parts of the data are missing due to sensor failures or inaccessibility, such as silent videos or LiDAR scans lacking RGB information. We propose Any2Any-a novel retrieval framework that addresses scenarios where both query and reference instances have incomplete modalities. Unlike previous methods limited to the imputation of two modalities, Any2Any handles any number of modalities without training generative models. It calculates pairwise similarities with cross-modal encoders and employs a two-stage calibration process with conformal prediction to align the similarities. Any2Any enables effective retrieval across multimodal datasets, e.g., text-LiDAR and text-time series. It achieves a Recall@5 of 35% on the KITTI dataset, which is on par with baseline models with complete modalities.

Keywords

Cite

@article{arxiv.2411.10513,
  title  = {Any2Any: Incomplete Multimodal Retrieval with Conformal Prediction},
  author = {Po-han Li and Yunhao Yang and Mohammad Omama and Sandeep Chinchali and Ufuk Topcu},
  journal= {arXiv preprint arXiv:2411.10513},
  year   = {2024}
}
R2 v1 2026-06-28T20:01:48.144Z