Latent Denoising Improves Visual Alignment in Large Multimodal Models
arXiv cs.CV / 4/24/2026
📰 NewsDeveloper Stack & InfrastructureModels & Research
Key Points
- The paper addresses a common limitation of large multimodal models (e.g., LLaVA): autoregressive training gives only indirect supervision to visual tokens, resulting in weak visual representations and brittle behavior under distribution shifts.
- It introduces a latent denoising training framework that corrupts projected visual tokens using a saliency-aware combination of masking and Gaussian noise, then trains the model to recover clean teacher patch features from an intermediate LLM layer via a decoder.
- To avoid representation collapse, the method preserves the teacher’s intra-image similarity structure and adds intra-image contrastive patch distillation.
- At inference time, the corruption process and auxiliary heads are disabled, so the approach adds no inference-time overhead while improving performance on multiple multimodal benchmarks, especially compositional robustness and ImageNet-C-style corruption robustness.
- The authors release code to support replication and further experimentation at the provided GitHub repository.
Related Articles

GPT-5.5 is here. So is DeepSeek V4. And honestly, I am tired of version numbers.
Dev.to

I Built an AI Image Workflow with GPT Image 2.0 (+ Fixing Its Biggest Flaw)
Dev.to
Max-and-Omnis/Nemotron-3-Super-64B-A12B-Math-REAP-GGUF
Reddit r/LocalLLaMA

Building a Visual Infrastructure Layer: How We’re Solving the "Visual Trust Gap" for E-com
Dev.to
Qwen3.6 35B-A3B is quite useful on 780m iGPU (llama.cpp,vulkan)
Reddit r/LocalLLaMA