Computer vision-based limestone rock-type classification using probabilistic neural network

被引:0
作者
Ashok Kumar Patel [1 ]
Snehamoy Chatterjee [2 ]
机构
[1] Department of Mining Engineering,NIT Rourkela
[2] Department of Geological and Mining Engineering and Sciences,Michigan Technological University
关键词
Supervised classification; Probabilistic neural network; Histogram based features; Smoothing parameter; Limestone;
D O I
暂无
中图分类号
TQ172.41 [];
学科分类号
0805 ; 080502 ;
摘要
Proper quality planning of limestone raw materials is an essential job of maintaining desired feed in cement plant. Rock-type identification is an integrated part of quality planning for limestone mine. In this paper, a computer vision-based rock-type classification algorithm is proposed for fast and reliable identification without human intervention. A laboratory scale vision-based model was developed using probabilistic neural network(PNN) where color histogram features are used as input. The color image histogram-based features that include weighted mean, skewness and kurtosis features are extracted for all three color space red, green, and blue. A total nine features are used as input for the PNN classification model. The smoothing parameter for PNN model is selected judicially to develop an optimal or close to the optimum classification model. The developed PPN is validated using the test data set and results reveal that the proposed vision-based model can perform satisfactorily for classifying limestone rocktypes. Overall the error of mis-classification is below 6%. When compared with other three classification algorithms, it is observed that the proposed method performs substantially better than all three classification algorithms.
引用
收藏
页码:53 / 60
页数:8
相关论文
共 15 条
[1]  
A Novel Memristive Multilayer Feedforward Small-World Neural Network with Its Applications in PID Control[J] . Zhekang Dong,Shukai Duan,Xiaofang Hu,Lidan Wang,Hai Li,Jinde Cao.The Scientific World Journal . 2014
[2]   Machine Learning Feature Selection Methods for Landslide Susceptibility Mapping [J].
Micheletti, Natan ;
Foresti, Loris ;
Robert, Sylvain ;
Leuenberger, Michael ;
Pedrazzini, Andrea ;
Jaboyedoff, Michel ;
Kanevski, Mikhail .
MATHEMATICAL GEOSCIENCES, 2014, 46 (01) :33-57
[3]   Vision-based rock-type classification of limestone using multi-class support vector machine [J].
Chatterjee, Snehamoy .
APPLIED INTELLIGENCE, 2013, 39 (01) :14-27
[4]  
Analysis of distance metrics in content-based image retrieval using statistical quantized histogram texture features in the DCT domain[J] . Fazal Malik,Baharum Baharudin.Journal of King Saud University ¨C Computer and Information Sciences . 2012
[5]  
Ore grade estimation by feature selection and voting using boundary detection in digital image analysis[J] . Claudio A. Perez,Pablo A. Estévez,Pablo A. Vera,Luis E. Castillo,Carlos M. Aravena,Daniel A. Schulz,Leonel E. Medina.International Journal of Mineral Processing . 2011 (1)
[6]  
Genetic algorithms for feature selection of image analysis-based quality monitoring model: An application to an iron mine[J] . Snehamoy Chatterjee,Ashis Bhattacherjee.Engineering Applications of Artificial Intelligence . 2010 (5)
[7]  
Towards automatic detection of atrial fibrillation: A hybrid computational approach[J] . Farid Yaghouby,Ahmad Ayatollahi,Reihaneh Bahramali,Maryam Yaghouby,Amir Hossein Alavi.Computers in Biology and Medicine . 2010 (11)
[8]   Ore image segmentation by learning image and shape features [J].
Mukherjee, Dipti Prasad ;
Potapovich, Yury ;
Levner, Ilya ;
Zhang, Hong .
PATTERN RECOGNITION LETTERS, 2009, 30 (06) :615-622
[9]  
Image-based quality monitoring system of limestone ore grades[J] . Snehamoy Chatterjee,Ashis Bhattacherjee,Biswajit Samanta,Samir Kumar Pal.Computers in Industry . 2009 (5)
[10]  
Wavelet and curvelet moments for image classification: Application to aggregate mixture grading[J] . Fionn Murtagh,Jean-Luc Starck.Pattern Recognition Letters . 2008 (10)