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Visual Para-Thinker: Divide-and-Conquer Reasoning for Visual Comprehension

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Existing LLM test-time scaling laws emphasize the emergence of self-reflective behaviors through extended reasoning length. Nevertheless, this vertical scaling strategy often encounters plateaus in exploration as the model becomes locked into specific thinking pattern. By shifting from depth to parallelism, parallel thinking mitigates the narrowing of exploration. However, the extension of this paradigm to visual domain remains an open research question. In this paper, we first examine the role of visual partitioning in parallelized reasoning and subsequently propose two distinct strategies. Based on the above, we introduce Visual Para-Thinker, representing the inaugural parallel reasoning framework for MLLMs. To maintain path independence and promote diversity in reasoning, our approach integrates Pa-Attention alongside LPRoPE. Leveraging the vLLM framework, we have developed a native multimodal implementation that facilitates high-efficiency parallel processing. Empirical results on benchmark datasets such as V*, CountBench, RefCOCO, and HallusionBench confirm that Visual Para-Thinker successfully extends the benefits of parallel reasoning to the visual domain.

Haoran Xu, Hongyu Wang, Jiaze Li, Shunpeng Chen, Zizhao Tong, Jianzhong Ju, Zhenbo Luo, Jian Luan• 2026

Related benchmarks

TaskDatasetResultRank
Visual GroundingRefCOCO+ (val)--
171
Visual GroundingRefCOCO+ (testB)--
169
Visual GroundingRefCOCO+ (testA)--
168
Visual GroundingRefCOCO (testB)--
125
Visual GroundingRefCOCO (val)--
119
Visual GroundingRefCOCO (testA)--
117
Visual GroundingRefCOCOg (test)--
96
Hallucination EvaluationHallusionBench--
93
Visual GroundingRefCOCOg (val)--
93
CountingCountBench
Accuracy85.4
52
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