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Sherlock: Self-Correcting Reasoning in Vision-Language Models

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Reasoning Vision-Language Models (VLMs) have shown promising performance on complex multimodal tasks. However, they still face significant challenges: they are highly sensitive to reasoning errors, require large volumes of annotated data or accurate verifiers, and struggle to generalize beyond specific domains. To address these limitations, we explore self-correction as a strategy to enhance reasoning VLMs. We first conduct an in-depth analysis of reasoning VLMs' self-correction abilities and identify key gaps. Based on our findings, we introduce Sherlock, a self-correction and self-improvement training framework. Sherlock introduces a trajectory-level self-correction objective, a preference data construction method based on visual perturbation, and a dynamic $\beta$ for preference tuning. Once the model acquires self-correction capabilities using only 20k randomly sampled annotated data, it continues to self-improve without external supervision. Built on the Llama3.2-Vision-11B model, Sherlock achieves remarkable results across eight benchmarks, reaching an average accuracy of 64.1 with direct generation and 65.4 after self-correction. It outperforms LLaVA-CoT (63.2), Mulberry (63.9), and LlamaV-o1 (63.4) while using less than 20% of the annotated data.

Yi Ding, Ruqi Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Spatial Reasoning3DSRBench
Overall Accuracy11.5
60
Spatial ReasoningCV-Bench-3D
Accuracy28.67
37
Visual GroundingBLINK
Accuracy39.61
27
Visual GroundingCVB 2D
Accuracy68.78
11
General reasoning / multi-disciplineAI2D
Accuracy61.54
11
Abstract ReasoningMMStar
Accuracy54.2
5
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