基于数字孪生的合成数据集自动生成模型的早期火灾探测系统

HyeonCheol Kim, Suk-Hwan Lee, Soo-Yol Ok
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引用次数: 0

摘要

火的性质是无定形的,它的特性根据所涉及的空间、环境和材料而变化。特别是火灾的早期探测是防止大型事故发生的关键。然而,机器学习方法缺乏可学习的早期数据集。本研究提出了一种针对特定空间量身定制的早期火灾探测系统,通过基于数字孪生的自动火灾学习数据生成模型实现。该方法首先自动生成真实的粒子模拟,在RGB-D图像中生成合成火灾数据。这些图像与监控摄像机的视角相匹配,以复制与实际空间非常相似的数字孪生环境。从本质上讲,我们的方法生成了合成的火灾数据,这些数据捕获了每个特定地点独特的各种火灾场景。随后,这些数据集被用于迁移学习,增强了最先进的检测模型的能力。然后将改进的模型部署在真实空间内的AIoT设备上。与缺乏对特定空间适应性的现有火灾探测模型相比,这种空间优化的合成火灾数据生成过程提高了准确性,降低了误检率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Fire Detection System by Synthetic Dataset Automatic Generation Model Based on Digital Twin
The nature of fire is amorphous and its characteristics vary based on the space, environment, and materials involved. Particularly, early fire detection is a crucial task in preventing large-scale accidents. However, there is a significant lack of learnable early fire datasets for machine learning approaches. This study presents an early fire detection system tailored to specific spaces, achieved through a digital twin-based automatic fire learning data generation model. The proposed method starts by automatically generating realistic particle simulations to create synthetic fire data in RGB-D images. These images are matched to the view angle of monitoring cameras to replicate the digital twin environment closely resembling the actual space. In essence, our approach produces synthetic fire data that captures diverse fire scenarios unique to each specific location. Subsequently, these datasets are employed for transfer learning, enhancing the capabilities of state-of-the-art detection models. The improved models are then deployed on AIoT devices within the real space. This spatially optimized synthetic fire data generation process enhances the accuracy and reduces false detection rates in comparison to existing fire detection models that lack adaptability to specific spaces.
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