Segmentation as A Plug-and-Play Capability for Frozen Multimodal LLMs
This addresses the problem of integrating segmentation into unified MLLMs for AI researchers, offering an incremental improvement by avoiding finetuning degradation.
The paper tackles the challenge of adding pixel-level segmentation to frozen multimodal LLMs without compromising their generalization, introducing LENS, a plug-and-play method that achieves competitive or superior segmentation performance compared to retraining-based approaches while fully preserving the model's capabilities.
Integrating diverse visual capabilities into a unified model is a significant trend in Multimodal Large Language Models (MLLMs). Among these, the inclusion of segmentation poses a distinct set of challenges. To equip MLLMs with pixel-level segmentation abilities, prevailing methods require finetuning the model to produce specific outputs compatible with a mask decoder. This process typically alters the model's output space and compromises its intrinsic generalization, which undermines the goal of building a unified model. We introduce LENS (Leveraging kEypoiNts for MLLMs' Segmentation), a novel plug-and-play solution. LENS attaches a lightweight, trainable head to a completely frozen MLLM. By refining the spatial cues embedded in attention maps, LENS extracts keypoints and describes them into point-wise features directly compatible with the mask decoder. Extensive experiments validate our approach: LENS achieves segmentation performance competitive with or superior to that of retraining-based methods. Crucially, it does so while fully preserving the MLLM's generalization capabilities, which are significantly degraded by finetuning approaches. As such, the attachable design of LENS establishes an efficient and powerful paradigm for extending MLLMs, paving the way for truly multi-talented, unified models.