Numeric anchors embedded in images systematically bias VLM quality judgments more than severe visual degradation, with layer-wise probing showing that anchor-saturated layers are suboptimal for quality prediction.
Where Vision Becomes Text: Locating the OCR Routing Bottleneck in Vision-Language Models
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abstract
Vision-language models (VLMs) can read text from images, but where does this optical character recognition (OCR) information enter the language processing stream? We investigate the OCR routing mechanism across three architecture families (Qwen3-VL, Phi-4, InternVL3.5) using causal interventions. By computing activation differences between original images and text-inpainted versions, we identify architecture-specific OCR bottlenecks whose dominant location depends on the vision-language integration strategy: DeepStack models (Qwen) show peak sensitivity at mid-depth (about 50%) for scene text, while single-stage projection models (Phi-4, InternVL) peak at early layers (6-25%), though the exact layer of maximum effect varies across datasets. The OCR signal is remarkably low-dimensional: PC1 captures 72.9% of variance. Crucially, principal component analysis (PCA) directions learned on one dataset transfer to others, demonstrating shared text-processing pathways. Surprisingly, in models with modular OCR circuits (notably Qwen3-VL-4B), OCR removal can improve counting performance (up to +6.9 percentage points), suggesting OCR interferes with other visual processing in sufficiently modular architectures.
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cs.AI 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Don't Look at the Numbers: Visual Anchoring Bias and Layer-wise Representation in VLMs
Numeric anchors embedded in images systematically bias VLM quality judgments more than severe visual degradation, with layer-wise probing showing that anchor-saturated layers are suboptimal for quality prediction.