AI RESEARCH
Activation Quantization of Vision Encoders Needs Prefixing Registers
arXiv CS.LG
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ArXi:2510.04547v4 Announce Type: replace Large pretrained vision encoders are central to multimodal intelligence, powering applications from on-device vision processing to vision-language models. Since these applications often demand real-time processing of massive visual data, reducing the inference cost of vision encoders is critical. Quantization offers a practical path, but it remains challenging even at 8-bit precision due to so-called outliers. In this work, we propose $\textit{RegCache}$, a.