AI RESEARCH

Multimodal Latent Reasoning via Hierarchical Visual Cues Injection

arXiv CS.CV

ArXi:2602.05359v2 Announce Type: replace The advancement of multimodal large language models (MLLMs) has enabled impressive perception capabilities. However, their reasoning process often remains a "fast thinking" paradigm, reliant on end-to-end generation or explicit, language-centric chains of thought (CoT), which can be inefficient, verbose, and prone to hallucination. This work posits that robust reasoning should evolve within a latent space, integrating multimodal signals seamlessly.