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QMoP: Query Guided Mixture-of-Projector for Efficient Visual Token Compression

About

Multimodal large language models suffer from severe computational and memory bottlenecks, as the number of visual tokens far exceeds that of textual tokens. While recent methods employ projector modules to align and compress visual tokens into text-aligned features, they typically depend on fixed heuristics that limit adaptability across diverse scenarios. In this paper, we first propose Query Guided Mixture-of-Projector (QMoP), a novel and flexible framework that adaptively compresses visual tokens via three collaborative branches: (1) a pooling-based branch for coarse-grained global semantics, (2) a resampler branch for extracting high-level semantic representations, and (3) a pruning-based branch for fine-grained token selection to preserve critical visual detail. To adaptively coordinate these branches, we introduce the Query Guided Router (QGR), which dynamically selects and weights the outputs from different branches based on both visual input and textual queries. A Mixture-of-Experts-style fusion mechanism is designed to aggregate the outputs, harnessing the strengths of each strategy while suppressing noise. To systematically evaluate the effects of Visual Token Compression, we also develop VTCBench, a dedicated benchmark for evaluating the information loss induced by visual token compression. Extensive experiments demonstrate that despite relying on fundamental compression modules, QMoP outperforms strong baselines and delivers significant savings in memory, computation, and inference time.

Zhongyang Li, Yaqian Li, Faming Fang, Rinyoichi Takezoe, Zi-Hao Bo, Cheng Qian, Mo Guang, Guixu Zhang, Kaiwen Long• 2026

Related benchmarks

TaskDatasetResultRank
Object Hallucination EvaluationPOPE
Accuracy88.2
1455
Visual Question AnsweringTextVQA--
1285
Visual Question AnsweringGQA
Accuracy62.7
1249
Multimodal UnderstandingMMBench--
637
Multimodal ReasoningMM-Vet
MM-Vet Score34.7
431
Multimodal UnderstandingSEED-Bench
Accuracy67
343
Multimodal UnderstandingMMStar
Accuracy33.7
324
Optical Character RecognitionOCRBench--
232
Multimodal Perception and CognitionMME
Overall Score1.52e+3
182
Multimodal UnderstandingMMBench (MMB)
Accuracy67.4
141
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