应用图像分类技术开发基于现场摄像机的尾矿库灾害监测人工智能

J. Engels, H. Gonzalez, G. Aedo
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引用次数: 0

摘要

图像分类是一个过程,在此过程中,图像的光谱信息,基于其数字,试图将单个像素分类为主题或特定对象(如植被,水,车辆,人等)。输出通常是图像映射或像素的马赛克,每个像素都属于特定的主题或标识,以产生对原始图像的独立覆盖。这种叠加可用于提供关于图像序列中发生的变化的后期分析,或者,例如,识别可能触发人为干预行动的潜在危险。图像分类的准确性是基于有足够的信息来训练模型来识别感兴趣的主题或对象。本文介绍了一种有监督的机器学习技术的结果,通过该技术识别目标对象,并运行模型来训练分类算法,以识别上清池大小的变化、上升速度、检测流入该区域的水以及移动设备的存在。训练图像是从基于现场的静态延时相机获取的,这些相机自2017年初以来一直在拍摄智利北部尾矿储存设施不同区域的图像。
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Applying image classification to develop artificial intelligence for tailings storage facility hazard monitoring using site-based cameras
Image classification is a process whereby the spectral information of an image, based on its digital numbers, attempts to classify individual pixels to a theme or specific object (e.g. vegetation, water, vehicles, people, etc.). The output is generally an image map or mosaic of pixels, each of which belong to a particular theme or identification to produce an independent overlay of the original image. This overlay can be used to provide a post analysis regarding changes that are occurring in a sequence of images or, for example, identify a potential hazard that can trigger an action for human intervention. The accuracy of image classification is based on having enough information to train a model to identify the theme or object of interest. This paper presents the results of a supervised machine learning technique whereby target objects were identified and models run to train the classification algorithm to identify changes in supernatant pond size, rates of rise, detection of inflows of water to an area and presence of mobile equipment. Training images were acquired from site-based static time-lapse cameras that have been taking images since early 2017 of different areas of a tailings storage facility in the north of Chile.
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