基于图像特征的机载单目摄像机矿井烟雾识别

Kushal Nagaraj, Thejas Gubbi Sadashiva, Sanjeev Kaushik Ramani, S. S. Iyengar
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引用次数: 1

摘要

火灾和烟雾在矿井中很常见,对在那里工作的人来说可能是灾难性的。本文研究了一种基于矿井烟雾探测与验证的预警机制。我们提出了一种基于计算机视觉的模型,该模型具有足够的鲁棒性,可以检测烟雾的存在和烟雾的运动方向。本文提出了一种与无人机(UAV)集成的烟雾探测模型。该模型的重点是烟雾探测,可以早期发现火灾。该模型是在图像处理的基础上工作的。该模型的显著特点是动态和实时处理。在这里,系统使用带有摄像头的无人机跟踪矿区的动态环境。考虑到径向和切向因素,对实时捕获的视频帧进行校准以克服失真。对得到的标定帧进行进一步处理,得到基于空间色相饱和度(HSV)着色模型的感兴趣区域(ROI)。然后使用opencv函数将帧的每个像素与烟雾的颜色范围进行比较。采用非局部均值去噪算法对匹配的感兴趣区域进行去噪,避免不必要的颜色。然后对这些过滤后的帧进行并发处理,以识别运动中的变化模式。基于这种模式,ROI被划分为冒烟或不冒烟。通过对每个像素的湍流分析来检测烟雾的强度。实验使用预先录制的烟雾视频剪辑进行。2)摄像机实时捕捉视频。结果在两个测试用例中都是积极的。因此,该模型对录制视频和实时视频都非常有效。关键词:无人机,ROI, HSV,去噪算法,模式匹配
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Feature Based Smoke Recognition in Mines Using Monocular Camera Mounted on Aerial Vehicles
Fire and smoke are common sight at mines and could be catastrophic for humans working there. Our paper focuses on an alert mechanism that is built based on detection and validation of smoke from mines. We propose a computer vision based model that is robust enough to detect presence of smoke and the direction of motion of smoke. This research paper proposes a smoke detection model integrated with Unmanned Aerial Vehicle (UAV). The model focuses on smoke detection that leads to early detection of fire. The model works on the basis of image processing. The distinguishing feature of our model is the dynamic and real time processing. Here the system tracks the dynamic environment in the mining areas using UAVs featured with cameras. The real time captured video frames are calibrated to overcome distortion considering the radial and tangential factors. The calibrated frame thus obtained is further processed to get the Region of Interest (ROI) based on the spatial Hue Saturation Value (HSV) colouring model. Each pixel of the frame is then compared with colour range of smoke using opencv functions. The matched ROI is de-noised using Non-local means De-nosing algorithm to avoid unnecessary colours. These filtered frames are then processed concurrently to identify the pattern of change in motion. Based on this pattern the ROI is classified as either smoke or no smoke. With the analysis of turbulence in each pixel the intensity of smoke is detected. The experiment is conducted with-1) Prerecorded smoke video clippings. 2) Real time video captured in the camera. The results turned out to be positive in both the test cases. So, the model works quite efficiently with both recorded and real time video. Key Terms: UAV, ROI, HSV, De-noising algorithm, pattern matching
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