CVMay 27

Self-Prophetic Decoding to Unlock Visual Search in LVLMs

arXiv:2605.2874163.9
AI Analysis

For practitioners of multimodal reasoning, SeProD offers a training-free, plug-and-play method to enhance visual search in existing LVLMs.

SeProD improves visual search in LVLMs by using self-prophetic decoding to mitigate capability deterioration and long-context interference, achieving consistent gains across all 12 splits of 4 visual search benchmarks and general VQA benchmarks without added computational overhead.

Large Vision-Language Models (LVLMs) are rapidly evolving toward true multimodal reasoning, with visual search representing a concrete instantiation of the thinking-with-images paradigm. However, LVLM visual search faces two key challenges: incompatibility among intrinsic capabilities after post-training, and interference in long multi-step reasoning contexts. To address these, we identify two novel insights. First, self-regulation between pre- and post-training LVLMs leverages the intrinsic single-step capabilities of the pre-training model to mitigate capability deterioration and long-context interference. Second, probability-based prophetic sampling, replacing naive prompting, provides a probabilistic interface where the pre-training model acts as a prophet and the post-training model selectively accepts prophetic tokens under its output distribution, preserving coherent multi-step reasoning. Building on these insights, we introduce SeProD, a self-prophetic decoding framework that leverages intrinsic single-step capabilities to enable coherent multi-step reasoning in a training-free, plug-and-play manner. Experiments show that SeProD consistently improves multiple visual-search LVLMs across all 12 splits of 4 visual search benchmarks, as well as across general VQA benchmarks, without added computational overhead, thanks to its parallel prophetic acceptance mechanism.

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