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Tuna-2: Pixel Embeddings Beat Vision Encoders for Multimodal Understanding and Generation

About

Unified multimodal models typically rely on pretrained vision encoders and use separate visual representations for understanding and generation, creating misalignment between the two tasks and preventing fully end-to-end optimization from raw pixels. We introduce Tuna-2, a native unified multimodal model that performs visual understanding and generation directly based on pixel embeddings. Tuna-2 drastically simplifies the model architecture by employing simple patch embedding layers to encode visual input, completely discarding the modular vision encoder designs such as the VAE or the representation encoder. Experiments show that Tuna-2 achieves state-of-the-art performance in multimodal benchmarks, demonstrating that unified pixel-space modelling can fully compete with latent-space approaches for high-quality image generation. Moreover, while the encoder-based variant converges faster in early pretraining, Tuna-2's encoder-free design achieves stronger multimodal understanding at scale, particularly on tasks requiring fine-grained visual perception. These results show that pretrained vision encoders are not necessary for multimodal modelling, and end-to-end pixel-space learning offers a scalable path toward stronger visual representations for both generation and perception.

Zhiheng Liu, Weiming Ren, Xiaoke Huang, Shoufa Chen, Tianhong Li, Mengzhao Chen, Yatai Ji, Sen He, Jonas Schult, Belinda Zeng, Tao Xiang, Wenhu Chen, Ping Luo, Luke Zettlemoyer, Yuren Cong• 2026

Related benchmarks

TaskDatasetResultRank
Text-to-Image GenerationGenEval
Overall Score87
704
Text-to-Image GenerationDPG-Bench
Overall Score86.54
451
Optical Character RecognitionOCRBench
Score79.7
433
Text-to-Image GenerationGenEval
Overall Score0.87
277
Image ReconstructionImageNet (val)
rFID0.12
143
Multimodal UnderstandingSEEDBench2 Plus
Accuracy61.1
138
Visual PerceptionMMVP--
118
Image EditingImgEdit
Add Score4.46
81
Image GenerationGenEval
Overall GenEval Score88
65
Chart UnderstandingChartQA
Score85.6
47
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