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arXiv 提交日期: 2026-01-29
📄 Abstract - InspecSafe-V1: A Multimodal Benchmark for Safety Assessment in Industrial Inspection Scenarios

With the rapid development of industrial intelligence and unmanned inspection, reliable perception and safety assessment for AI systems in complex and dynamic industrial sites has become a key bottleneck for deploying predictive maintenance and autonomous inspection. Most public datasets remain limited by simulated data sources, single-modality sensing, or the absence of fine-grained object-level annotations, which prevents robust scene understanding and multimodal safety reasoning for industrial foundation models. To address these limitations, InspecSafe-V1 is released as the first multimodal benchmark dataset for industrial inspection safety assessment that is collected from routine operations of real inspection robots in real-world environments. InspecSafe-V1 covers five representative industrial scenarios, including tunnels, power facilities, sintering equipment, oil and gas petrochemical plants, and coal conveyor trestles. The dataset is constructed from 41 wheeled and rail-mounted inspection robots operating at 2,239 valid inspection sites, yielding 5,013 inspection instances. For each instance, pixel-level segmentation annotations are provided for key objects in visible-spectrum images. In addition, a semantic scene description and a corresponding safety level label are provided according to practical inspection tasks. Seven synchronized sensing modalities are further included, including infrared video, audio, depth point clouds, radar point clouds, gas measurements, temperature, and humidity, to support multimodal anomaly recognition, cross-modal fusion, and comprehensive safety assessment in industrial environments.

顶级标签: benchmark multi-modal systems
详细标签: industrial inspection safety assessment multimodal dataset anomaly recognition robot perception 或 搜索:

InspecSafe-V1:一个用于工业巡检场景安全评估的多模态基准数据集 / InspecSafe-V1: A Multimodal Benchmark for Safety Assessment in Industrial Inspection Scenarios


1️⃣ 一句话总结

这篇论文发布了一个名为InspecSafe-V1的新型多模态基准数据集,它通过收集真实巡检机器人在多种工业场景下的多传感器数据,并提供了像素级标注和安全等级标签,旨在解决现有数据在真实性、多模态和细粒度标注方面的不足,以支持工业AI系统进行更可靠的安全评估和异常识别。

源自 arXiv: 2601.21173