AbductiveMLLM: Boosting Visual Abductive Reasoning Within MLLMs

Authors

  • Boyu Chang Beijing Institute of Technology
  • Qi Wang Beijing Institute of Technology Beijing Institute of Technology, Zhuhai
  • Xi Guo Beijing Institute of Technology
  • Zhixiong Nan Chongqing University
  • Yazhou Yao Nanjing University of Science and Technology
  • Tianfei Zhou Beijing Institute of Technology State Key Laboratory of Environment Characteristics and Effects for Near-space

DOI:

https://doi.org/10.1609/aaai.v40i4.37258

Abstract

Visual abductive reasoning (VAR) is a challenging task that requires AI systems to infer the most likely explanation for incomplete visual observations. While recent MLLMs develop strong general-purpose multimodal reasoning capabilities, they remain fall short in abductive inference, as compared to human beings. To bridge this gap, we draw inspiration from the interplay between verbal and pictorial abduction in human cognition, and propose to strengthen abduction of MLLMs by mimicking such dual-mode behavior. Concretely, we introduce AbductiveMLLM comprising of two synergistic components: REASONER and IMAGINER. The REASONER operates in the verbal domain. It first explores a broad space of possible explanations using a blind LLM and then prunes visually incongruent hypotheses based on cross-modal causal alignment. The remaining hypotheses are introduced into the MLLM as targeted priors, steering its reasoning toward causally coherent explanations. The IMAGINER, on the other hand, further guides MLLMs by emulating human-like pictorial thinking. It conditions a text-to-image diffusion model on both the input video and the REASONER’s output embeddings to “imagine” plausible visual scenes that correspond to verbal explanation, thereby enriching MLLMs' contextual grounding. The two components are trained jointly in an end-to-end manner. Experiments on standard VAR benchmarks show that AbductiveMLLM achieves state-of-the-art performance, consistently outperforming traditional solutions and advanced MLLMs.

Published

2026-03-14

How to Cite

Chang, B., Wang, Q., Guo, X., Nan, Z., Yao, Y., & Zhou, T. (2026). AbductiveMLLM: Boosting Visual Abductive Reasoning Within MLLMs. Proceedings of the AAAI Conference on Artificial Intelligence, 40(4), 2698–2706. https://doi.org/10.1609/aaai.v40i4.37258

Issue

Section

AAAI Technical Track on Computer Vision I