面向地下基础设施评估的边缘优化视觉语言模型 / Edge-Optimized Vision-Language Models for Underground Infrastructure Assessment
1️⃣ 一句话总结
这篇论文提出了一种能在移动机器人上实时运行的两阶段智能系统,先用一个轻量模型识别地下管道缺陷,再用一个优化过的视觉语言模型自动生成通俗易懂的维修报告,让机器巡检结果能直接用于指导实际维护工作。
Autonomous inspection of underground infrastructure, such as sewer and culvert systems, is critical to public safety and urban sustainability. Although robotic platforms equipped with visual sensors can efficiently detect structural deficiencies, the automated generation of human-readable summaries from these detections remains a significant challenge, especially on resource-constrained edge devices. This paper presents a novel two-stage pipeline for end-to-end summarization of underground deficiencies, combining our lightweight RAPID-SCAN segmentation model with a fine-tuned Vision-Language Model (VLM) deployed on an edge computing platform. The first stage employs RAPID-SCAN (Resource-Aware Pipeline Inspection and Defect Segmentation using Compact Adaptive Network), achieving 0.834 F1-score with only 0.64M parameters for efficient defect segmentation. The second stage utilizes a fine-tuned Phi-3.5 VLM that generates concise, domain-specific summaries in natural language from the segmentation outputs. We introduce a curated dataset of inspection images with manually verified descriptions for VLM fine-tuning and evaluation. To enable real-time performance, we employ post-training quantization with hardware-specific optimization, achieving significant reductions in model size and inference latency without compromising summarization quality. We deploy and evaluate our complete pipeline on a mobile robotic platform, demonstrating its effectiveness in real-world inspection scenarios. Our results show the potential of edge-deployable integrated AI systems to bridge the gap between automated defect detection and actionable insights for infrastructure maintenance, paving the way for more scalable and autonomous inspection solutions.
面向地下基础设施评估的边缘优化视觉语言模型 / Edge-Optimized Vision-Language Models for Underground Infrastructure Assessment
这篇论文提出了一种能在移动机器人上实时运行的两阶段智能系统,先用一个轻量模型识别地下管道缺陷,再用一个优化过的视觉语言模型自动生成通俗易懂的维修报告,让机器巡检结果能直接用于指导实际维护工作。
源自 arXiv: 2602.03742