haku: @keyword image processing / yhteensä: 26
viite: 1 / 26
« edellinen | seuraava »
Tekijä:Verhallen, Gijs
Työn nimi:Characterizing the valuable content of Au ores from the Cortez Hills underground deposit using digital RGB images
Julkaisutyyppi:Diplomityö
Julkaisuvuosi:2016
Sivut:76 s. + liitt. 14      Kieli:   eng
Koulu/Laitos/Osasto:Insinööritieteiden korkeakoulu
Oppiaine:European Mining Course   (R3008)
Valvoja:Leveinen, Jussi
Ohjaaja:Buxton, Mike ; Dalm, M.
Elektroninen julkaisu: http://urn.fi/URN:NBN:fi:aalto-201702011424
Sijainti:P1 Ark Aalto  7976   | Arkisto
Avainsanat:sensor based sorting
Carlin-Type gold deposit
Cortez Mine
image processing
Tiivistelmä (eng):Sensor Based Sorting can decrease the amount of material processed in the subsequent processing steps, by separating the valuable material from the invaluable material, and therefore potentially reducing costs in those subsequent steps.
For sensor based sorting to be effective, a strong relation needs to be present between the properties detectable with real-time sensors and the valuable content.
This thesis report describe a preliminary study, which aims to evaluate the potential of the use of RGB images in predicting gold presence and abundance in drillhole samples from the Cortez Hills underground mine in Nevada, U.S.A.

The goal of this research is to find a relation between image data and geochemical data.
The image data include RGB images acquired by a Specim core logger of 628 drillcore samples from the Cortez Hills Lower Zone deposit.
Material from the same drillcores has been analyzed geochemically by Barrick.
The Cortez Hills deposit consists of disseminated gold particles in highly altered calcareous host rocks.
Because of the complexity of its geological history, the appearance of the samples varies and this variation is possibly linked with the gold mineralization.

The geochemical data is used to replicate the classification of ore types known at Cortez: Refractory ore (Autoclave ore & Roaster ore), Oxide ore (Mill Oxide ore & Leach Oxide ore) and Waste.
This classified based on Gold content, Arsenic content and gold recovery.
This research aims to distinguish these 5 ore types (Autoclave, Roaster, Mill, Leach and Waste) by the image data.

The image data was analyzed and compared to these ore types using color based parameters and textural parameters both defined in Matlab. 19 Color based parameters were created based on RGB and HSV values. 28 Textural parameters are obtained using functions from the image Processing Toolbox of Matlab.
All parameters are compared with the different ore types.
Of all color based and textural parameters, the average blue intensity parameter is the best for separating ore and waste: Half of the samples below a blue intensity of 0.3 are classified as ore, and above this threshold 89.7% was classified as waste.

The color based parameters and textural parameters are also put in one matrix making a data matrix used for PCA and PLS-DA models.
The scores and responses of these models are again compared to the 5 ore types.
PLS-DA proved to be the best method in separating oxide ore, refractory ore and waste based on a set of 47 image data variables.
By combining multiple PLS-DA models, 87.2% of the data set is classified in three groups, Refractory, Oxide and Waste, with an accuracy of 75.8%.

The research showed relations between RGB image data and both gold presence and gold recovery and therefore as well between RGB image data and the types refractory, oxide and waste.
In ore sorting applications, this could not only mean a significant decrease in the volume of the feed, but also a valuable addition to blending purposes.
Because of the relations found between image data and gold content, the Cortez Hills underground mine and other Carlin-type mines in the area may show potential for implementation of sensor based sorting in the processing operation at the mine.
ED:2017-03-26
INSSI tietueen numero: 55760
+ lisää koriin
« edellinen | seuraava »
INSSI