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arXiv 提交日期: 2026-06-09
📄 Abstract - Vision-Assisted Foundation Model for Solving Multi-Task Vehicle Routing Problems

Multi-task vehicle routing problems play a critical role in enhancing efficiency across various industries and service sectors. These problems consist of multiple variants that optimize routing costs while meeting diverse customer constraints. Existing multi-task VRP solvers solely utilize a graph-based modality, limiting their ability to address variants with multiple constraints. As a format to represent complex semantics, vision modality shows great potential for encoding diverse VRP constraints. This motivates us to learn patch-level semantics from the vision images, and then integrate them into a graph-based model to solve various VRP variants simultaneously. However, directly applying this approach to multi-task VRPs presents three challenges: 1) existing VRP images lack constraint representations, which are essential for multi-task VRPs, 2) the fixed receptive field of individual patches cannot effectively accommodate varying requirements across tasks, and 3) imbalanced pixel distribution among constraints may cause the model to overlook constraints with fewer pixels. In this paper, we propose a vision-assisted foundation model (VaFM) to address these challenges. In the vision modality, input images tailored to all constraints are encoded by a convolutional neural network. The obtained patch embeddings are fused with graph-based nodes to generate solutions, with an auxiliary task designed to address the pixel-imbalanced issue. The performance of VaFM is evaluated across 16 different VRP variants. The experimental results demonstrate the superiority of VaFM over state-of-the-art methods, especially for variants with complex constraints.

顶级标签: machine learning multi-modal
详细标签: vehicle routing problems graph neural networks vision modality multi-task learning foundation model 或 搜索:

视觉辅助的求解多任务车辆路径问题基础模型 / Vision-Assisted Foundation Model for Solving Multi-Task Vehicle Routing Problems


1️⃣ 一句话总结

该论文提出了一种视觉辅助的基础模型,通过将车辆路径问题的多种约束转化为图像信息,并与传统图结构模型融合,从而一次性高效求解16种不同类型的路径优化任务,尤其擅长处理复杂约束情况。

源自 arXiv: 2606.10431