DETECTION AND CLASSIFICATION OF INDIGENOUS ROCK MINERALS USING DEEP LEARNING TECHNIQUES
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Date
2023-03-08
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Hawassa University
Abstract
Ethiopia is undoubtedly a place of riches, with a vast and diverse landmass that is rich in
resources. However, less attention has been given in utilizing computing discipline like Artificial
Intelligence to solve the current problems in the area of mineral mining in Ethiopia. GUJI Zone is
one of Oromia 20 administrative zones blessed with different mineral resources. Despite the fact
that mineral has lions share contribution to economy of Ethiopia, little work is done in
modernizing the mining industry in Ethiopia especially in empowering small-scale Artisanal
community. GUJI is one of the zones following outmoded techniques to identify minerals in mining
industry.
Rock mineral detection and classification employing conventional methods involves testing
physical and chemical properties at both the micro- and macro-scale in the laboratory, which is
expensive and time-consuming. Identifying tiny rock minerals and detecting its originality using
traditional procedure and techniques takes too much time. Identification of minerals merely
through visual observation is often erroneous. To address these problems, a deep learning
approach for the classification and detection of Rock Minerals is proposed. The design- science
research methodology is followed to achieve the objectives of the research. To conduct this study,
2000 images were collected from Guji’s zone and Mindat.org website. After collecting the images,
image pre-processing techniques such as image resizing, image segmentation using roboflow, and
image annotation are performed. Moreover, data augmentation is applied to balance the dataset
and increase the number of images. This research work focuses on classifying and detecting fifteen
types of rock minerals. Based on YOLOv7 deep learning model we have used 70% of the dataset
to train the model and 30 % of the dataset to test the performance of the model. Finally, the
developed model is evaluated using accuracy, precision, recall, and mAP with other models.
Experimental result shows that the accuracy obtained from YOLOv7 is 76%mAP for large objects
comparing to other models. Consequently, the pretrained weight of yolov7 achieved a 97.3%
accuracy in classifying and detecting with other images
Description
Keywords
Rock Minerals, Deep Neural Network, pretrained weight, training from the scratch, YOLOv7
