Welcome to the official code repository for Efficient Multimodal Semantic Segmentation via Dual-Prompt Learning. We're excited to share our work with you, please bear with us as we prepare the code and demo. Stay tuned for the reveal!
Previous multimodal methods often need to fully fine-tune the entire network, which are training-costly due to massive parameter updates in the feature extraction and fusion, and thus increases the deployment burden of multimodal semantic segmentation. In this paper, we propose a novel and simple yet effective dual-prompt learning paradigm, dubbed DPLNet, for training-efficient multimodal semantic segmentation.
Overview architecture of the proposed DPLNet, which adapts a frozen pre-trained model using two specially designed prompting learning modules, MPG for multimodal prompt generation and MFA for multimodal feature adaption, with only a few learnable parameters to achieve multimodal semantic segmentation in a training-efficient way.