CVAIFeb 2, 2025

VIKSER: Visual Knowledge-Driven Self-Reinforcing Reasoning Framework

arXiv:2502.00711v21 citationsh-index: 8
Originality Incremental advance
AI Analysis

This work addresses visual reasoning challenges for AI systems, offering an incremental improvement through enhanced interpretability and accuracy.

The paper tackles the problem of limited reasoning interpretability and underspecification in visual reasoning by proposing VIKSER, a framework that uses fine-grained visual knowledge and a Chain-of-Evidence prompting method, achieving new state-of-the-art results on widely used datasets and performance comparable to leading proprietary models like ChatGPT-5.

Visual reasoning refers to the task of solving questions about visual information. Current visual reasoning methods typically employ pre-trained vision-language model (VLM) strategies or deep neural network approaches. However, existing efforts are constrained by limited reasoning interpretability, while hindering by the phenomenon of underspecification in the question text. Additionally, the absence of fine-grained visual knowledge limits the precise understanding of subject behavior in visual reasoning tasks. To address these issues, we propose VIKSER (Visual Knowledge-Driven Self-Reinforcing Reasoning Framework). Specifically, VIKSER, trained using knowledge distilled from large language models, extracts fine-grained visual knowledge with the assistance of visual relationship detection techniques. Subsequently, VIKSER utilizes fine-grained visual knowledge to paraphrase the question with underspecification. Additionally, we design a novel prompting method called Chain-of-Evidence (CoE), which leverages the power of "evidence for reasoning" to endow VIKSER with interpretable reasoning capabilities. Meanwhile, the integration of self-reflection technology empowers VIKSER with the ability to learn and improve from its mistakes. Experiments conducted on widely used datasets demonstrate that VIKSER achieves new state-of-the-art (SOTA) results in relevant tasks. Moreover, VIKSER achieves performance on par with leading proprietary models, such as the latest ChatGPT-5.

Foundations

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