Section 01
VEC-DPO: Visual Evidence Calibration Technology Mitigates Hallucination in Multimodal Large Models
Core Insights: VEC-DPO (Visual Evidence Calibration Direct Preference Optimization) is a hallucination mitigation method for multimodal large language models (MLLMs). It guides the model to rely on the actual content of images through explicit visual evidence calibration, thereby reducing hallucinations. Original Author/Maintainer: wwoww1 Source Platform: GitHub Original Link: https://github.com/wwoww1/VEC-DPO Publication Date: 2026-06-02 Related Paper: "Visual Evidence Calibration for Hallucination Mitigation in Multimodal Large Language Models" This thread will introduce the background, method, experimental results, application value, limitations, and future directions in separate floors.