8

Improving VQA Reliability: A Dual-Assessment Approach with Self-Reflection and Cross-Model Verification

Xixian Wu
Yang Ou
Pengchao Tian
Zian Yang
Jielei Zhang
Peiyi Li
Longwen Gao
Main:3 Pages
1 Figures
Bibliography:1 Pages
3 Tables
Abstract

Vision-language models (VLMs) have demonstrated significant potential in Visual Question Answering (VQA). However, the susceptibility of VLMs to hallucinations can lead to overconfident yet incorrect answers, severely undermining answer reliability. To address this, we propose Dual-Assessment for VLM Reliability (DAVR), a novel framework that integrates Self-Reflection and Cross-Model Verification for comprehensive uncertainty estimation. The DAVR framework features a dual-pathway architecture: one pathway leverages dual selector modules to assess response reliability by fusing VLM latent features with QA embeddings, while the other deploys external reference models for factual cross-checking to mitigate hallucinations. Evaluated in the Reliable VQA Challenge at ICCV-CLVL 2025, DAVR achieves a leading Φ100\Phi_{100} score of 39.64 and a 100-AUC of 97.22, securing first place and demonstrating its effectiveness in enhancing the trustworthiness of VLM responses.

View on arXiv
Comments on this paper