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Volume 39 Issue 7
Jul.  2017
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Article Contents
WU Yun-xia, TIAN Yi-min. A coal-rock recognition method based on max-pooling sparse coding[J]. Chinese Journal of Engineering, 2017, 39(7): 981-987. doi: 10.13374/j.issn2095-9389.2017.07.002
Citation: WU Yun-xia, TIAN Yi-min. A coal-rock recognition method based on max-pooling sparse coding[J]. Chinese Journal of Engineering, 2017, 39(7): 981-987. doi: 10.13374/j.issn2095-9389.2017.07.002

A coal-rock recognition method based on max-pooling sparse coding

doi: 10.13374/j.issn2095-9389.2017.07.002
  • Received Date: 2017-01-01
  • Because of the lack of coal-rock methods, a novel coal-rock recognition method was proposed based on max-pooling sparse coding in order to explore new coal-rock image recognition methods and efficiently handle high-dimensional coal-rock image data. This method adds the pooling operation when extracting coal-rock image features and adopts the integrated classifier, which consists of multiple weak classifiers when classifying coal-rock images. The experimental results show that this feature-extraction method based on max-pooling sparse coding can simply and effectively express the characteristic information of coal-rock images, greatly enhance the distinguishability of coal-rock images, and achieve a high recognition rate. This method also has good recognition stability. The results obtained herein could provide a new idea and method for automatic coal-rock interface recognition.

     

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  • [7]
    Hinton G E, Osindero S, Teh Y W. A fast learning algorithm for deep belief nets. Neural Comput, 2006, 18(7):1527
    [8]
    Larochelle H, Bengio Y, Louradour J, et al. Exploring strategies for training deep neural networks. J Machine Learning Res, 2009, 10(1):1
    [9]
    Chen W, Rodrigues M R D. Dictionary learning with optimized projection design for compressive sensing applications. IEEE Signal Process Lett, 2013, 20(10):992
    [10]
    Elad M, Aharon M. Image denoising via sparse and redundant representation over learned dictionaries. IEEE Trans Image Process, 2006, 15(12):3736
    [11]
    Zhou G H, Zhu D Z, Wang K, et al. Wavelet image inpainting based on dictionary learning with a beta process//World Automation Congress. Puerto Vallarta, 2012
    [12]
    Kukreja S L, Löfberg J, Brenner M J. A least absolute shrinkage and selection operator (LASSO) for nonlinear system identification. IFAC Proc Volumes, 2006, 39(1):814
    [13]
    Yan Z B, Yao Y. Variable selection method for fault isolation using least absolute shrinkage and selection operator (LASSO). Chemom Intell Lab Syst, 2015, 146:136
    [14]
    Tropp J A. Greed is good:algorithmic results for sparse approximation. IEEE Trans Inf Theory, 2004, 50(10):2231
    [15]
    Li J, Wang Q, Shen Y. Near optimal condition of OMP algorithm in recovering sparse signal from noisy measurement. J Syst Eng Electron, 2014, 25(4):547
    [16]
    Cai T T, Wang L. Orthogonal matching pursuit for sparse signal recovery with noise. IEEE Trans Inf Theory, 2011, 57(7):4680
    [17]
    Aharon M, Elad M, Bruckstein A. rmK-SVD:an algorithm for designing overcomplete dictionaries for sparse representation. IEEE Trans Signal Process, 2006, 54(11):4311
    [18]
    Ptucha R, Savakis A E. LGE-KSVD:robust sparse representation classification. IEEE Trans Image Process, 2014, 23(4):1737
    [19]
    Jiang Z L, Lin Z, Davis L S. Label consistent K-SVD:learning a discriminative dictionary for recognition. IEEE Trans Pattern Anal Machine Intell, 2013, 35(11):2651
    [20]
    Bryt O, Elad M. Compression of facial images using the K-SVD algorithm. J Visual Commun Image Representation, 2008, 19(4):270
    [22]
    Breiman L. Random forests. Machine Learning, 2001, 45(1):5
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