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Automated relief-based discrimination of non-opaque minerals in optical image analysis

机译:基于浮雕的光学图像分析中非透明矿物的自动识别

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Ore characterisation is important in order to understand the quality of ores and their behaviour during downstream processing. Many significant ore characteristics can only be determined through the use of various imaging techniques. Optical Image Analysis (OIA) is one such technique and is particularly attractive for many applications due to its low cost and high resolution. However OIA also has some limitations, one of which is the difficulty with discriminating non-opaque minerals. Some non-opaque minerals, such as quartz, are typical gangue minerals in certain types of iron ores. Even though in many cases quartz particles can be easily seen and attributed by mineralogists in polished sections, their automated discrimination has always been an issue, the reasons for which are discussed in this article. The ability to automatically discriminate quartz and other non-opaque minerals would significantly increase the value of OIA for the mineral industry. This paper describes a novel method of discriminating non-opaque minerals in the sample by their optical relief, which results in visible borders between the mineral and the epoxy resin mounting medium. An algorithm for such discrimination that has been developed for the CSIRO Mineral4/Recognition4 OIA software package is described. The algorithm is based on dynamic thresholding of the image with subsequent cleanup and enhancement to reliably determine borders between non-opaque particles and epoxy and on subsequent attribution of image areas created by these borders to either the non-opaque mineral or the epoxy resin. Further, this article discusses difficulties that may arise when applying this algorithm due to sample peculiarities and describes algorithm enhancements incorporated in Mineral4 in order to overcome these issues. The resulting software is capable of reliably discriminating non-opaque minerals in a variety of samples, including iron and manganese ores.
机译:为了了解矿石的质量及其在下游加工过程中的行为,矿石表征非常重要。许多重要的矿石特征只能通过使用各种成像技术来确定。光学图像分析(OIA)就是这样一种技术,由于其低成本和高分辨率,因此在许多应用中特别有吸引力。但是,OIA也有一些局限性,其中之一是难以区分不透明的矿物。在某些类型的铁矿石中,某些非透明矿物(例如石英)是典型的脉石矿物。即使在很多情况下矿物学家可以在抛光的区域中轻松看到并归因于石英颗粒,但它们的自动识别一直是一个问题,本文将讨论其原因。自动区分石英和其他不透明矿物的能力将显着提高OIA在矿物工业中的价值。本文介绍了一种通过光学浮雕来区分样品中不透明矿物的新方法,该方法可在矿物和环氧树脂固定介质之间形成可见的边界。描述了针对CSIRO Mineral4 / Recognition4OIA软件包开发的这种区分算法。该算法基于图像的动态阈值处理以及随后的清理和增强,以可靠地确定非不透明颗粒和环氧树脂之间的边界,并且基于这些边界所产生的图像区域随后归属于非不透明矿物或环氧树脂。此外,本文讨论了由于样本的特殊性而在应用此算法时可能出现的困难,并介绍了Mineral4中包含的算法增强功能,以克服这些问题。生成的软件能够可靠地区分各种样品(包括铁矿石和锰矿石)中的不透明矿物。

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