Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

Innovative chest X-ray image recognition technique and its economic value

Published: 19 August 2021 Publication History

Abstract

Image recognition techniques can recognize abnormal medical images, directly contributing to achieving high-quality diagnosis. In particular, with the development of deep learning technology, the recognition accuracy of abnormalities has steadily increased. However, there are usually no adequate learning instances for chest X-ray images, which directly leads to the failure of high-quality recognition. To solve this problem, we proposed a multi-weight-based limited learning instance model for chest X-ray image recognition. First, an optimized saliency detection model directly deleted the unsatisfactory learning instances, especially for learning instances without obvious significance. Second, multi-scale decomposition and sparse representation were combined to calculate the weights of different learning instances. Third, a multi-weight-based cost function was constructed to achieve high-quality recognition results by considering learning instances from multiple cases. Finally, according to the experimental database, we carried out experiments in which our method could achieve satisfactory recognition accuracy while using limited learning instances. More importantly, the economic value of this method cannot be underestimated considering that modern technology has become an important way to promote economic development.

References

[1]
Ghosh S, Chaudhary V . Feature analysis for automatic classification of HEp-2 florescence patterns: computer-aided diagnosis of auto-immune diseases[C]// International Conference on Pattern Recognition. IEEE, 2013.
[2]
Gupta N, Meraj R, Tanase D, et al. Accuracy of chest high-resolution computed tomography in diagnosing diffuse cystic lung diseases Eur Respir J 2015 46 4
[3]
Raftery AE Bayesian model selection in social research Sociol Methodol 1995 25 111-163
[4]
Horowitz E and Zorat A The binary tree as an interconnection network: applications to multiprocessor systems and VLSI IEEE Trans Comput 1981 4 247-253
[5]
Jain AK Data clustering: 50 years beyond K-means Pattern Recogn Lett 2010 31 8 651-666
[6]
Chang CC and Lin CJ LIBSVM: a library for support vector machines ACM transactions on intelligent systems and technology (TIST) 2011 2 3 27
[7]
Subasi A Classification of EMG signals using PSO optimized SVM for diagnosis of neuromuscular disorders Comput Biol Med 2013 43 5 576-586
[8]
A XZ, B YL, C JZ, et al. A novel bearing fault diagnosis model integrated permutation entropy, ensemble empirical mode decomposition and optimized SVM Measurement 2015 69 164-179
[9]
Pasolli E, Melgani F, Tuia D, et al. SVM active learning approach for image classification using spatial information IEEE Transactions on Geoscience & Remote Sensing 2014 52 4 2217-2233
[10]
Liu, Yang, Wen, et al. SVM based multi-label learning with missing labels for image annotation. Pattern Recognition the Journal of the Pattern Recognition Society, 2018
[11]
Bertelli L, Yu T, Vu D, et al. Kernelized structural SVM learning for supervised object segmentation[C]// Computer Vision and Pattern Recognition (CVPR), 2011 IEEE Conference on. IEEE, 2011
[12]
Bai X and Wang W Saliency-SVM: an automatic approach for image segmentation Neurocomputing 2014 136 8 243-255
[13]
Gu J, Wang G, Cai J, et al. An empirical study of language CNN for image captioning[C]// 2017 IEEE International Conference on Computer Vision (ICCV). IEEE, 2017
[14]
Rocco I, Arandjelovi R, and Sivic J Convolutional neural network architecture for geometric matching Pattern Analysis and Machine Intelligence, IEEE Transactions on 2018 41 11 2553-2567
[15]
Kundu S, Nazemi M, Pedram M, et al. Pre-defined sparsity for low-complexity convolutional neural networks IEEE Trans Comput 2020 PP(99) 1-1
[16]
Hjelm RD, Calhoun VD, Salakhutdinov R, Allen EA, Adali T, and Plis SM Restricted Boltzmann machines for neuroimaging: an application in identifying intrinsic networks Neuroimage 2014 96 245-260
[17]
Zcab C, Wmab C, Wei D, et al. Conditional restricted Boltzmann machine for item recommendation—ScienceDirect Neurocomputing 2020 385 269-277
[18]
Lore KG, Akintayo A, and Sarkar S LLNet: a deep autoencoder approach to natural low-light image enhancement Pattern Recogn 2017 61 650-662
[19]
Karatsiolis S and Schizas CN Conditional generative denoising autoencoder IEEE Transactions on Neural Networks and Learning Systems 2019 PP(99) 1-13
[20]
Gao S, Chia LT, Tsang WH, et al. Concurrent single-label image classification and annotation via efficient multi-layer group sparse coding IEEE Transactions on Multimedia 2014 16 3 762-771
[21]
Liu Y, Canu S, Honeine P et al (2019) Mixed integer programming for sparse coding: application to image denoising. IEEE Transactions on Computational Imaging:1–1
[22]
Zhou Z, Jing LI, Quan Y, et al. Image quality assessment using kernel sparse coding IEEE Transactions on Multimedia 2020 PP(99) 1-1
[23]
Wang G, Forsyth D, Hoiem D (2010) Comparative object similarity for improved recognition with few or no examples[C]//Computer Vision and Pattern Recognition (CVPR), 2010 IEEE Conference on. IEEE:3525–3532
[24]
Chang H, Han J, Zhong C et al (2018) Unsupervised transfer learning via multi-scale convolutional sparse coding for biomedical applications. IEEE Transactions on Pattern Analysis & Machine Intelligence:1–1
[25]
Hao W, Yueli L, Xiaohan B, et al. Joint entropy based learning model for image retrieval J Vis Commun Image Represent 2018 55 S1047320318301469
[26]
Wu H, Li Y, Xiong J, Bi X, Zhang L, Bie R, and Guo J Weighted-learning-instance-based retrieval model using instance distance Mach Vis Appl 2019 30 1 163-176
[27]
Wang X, Peng Y, Lu L, et al. ChestX-ray8: Hospital-scale chest X-ray database and benchmarks on weakly-supervised classification and localization of common thorax diseases. 2017
[28]
Subr K, Soler C, and Durand F Edge-preserving multiscale image decomposition based on local extrema ACM Transactions on Graphics (TOG) 2009 28 5 147
[29]
Wu H, Li Y, Miao Z, Wang Y, Zhu R, Bie R, and Lie R A new sampling algorithm for high-quality image matting J Vis Commun Image Represent 2016 38 573-581
[30]
Yang C, Zhang L, Lu H, et al. Saliency detection via graph-based manifold ranking[C]// Computer Vision & Pattern Recognition. IEEE, 2013.
[31]
A WWYN, A JL, B XTA, et al. Multi-level supervised hashing with deep features for efficient image retrieval Neurocomputing 2020 399 171-182
[32]
Seddati O, Dupont S, Mahmoudi S, et al. Towards good practices for image retrieval based on CNN features[C]// Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. IEEE, 2018
[33]
Dimitrovski I, Kocev D, Loskovska S, and Džeroski S Improving bag-of-visual-words image retrieval with predictive clustering trees Inf Sci 2016 329 851-865
[34]
Andrea Vedaldi and Andrew Zisserman “Image classification practical”, http://www.robots.ox.ac.uk/~vgg/share/practical-image-classification.htm (2011)
[35]
Lazebnik, Svetlana, Cordelia Schmid, and Jean Ponce. "Beyond bags of features: spatial pyramid matching for recognizing natural scene categories." Computer Vision and Pattern Recognition, 2006 IEEE Computer Society Conference on. Vol. 2. IEEE, 2006
[36]
Nowak E, Jurie F, and Triggs B Sampling strategies for bag-of-features image classification Computer Vision–ECCV 2006 2006 490-503

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image Personal and Ubiquitous Computing
Personal and Ubiquitous Computing  Volume 27, Issue 4
Aug 2023
190 pages

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 19 August 2021
Accepted: 02 August 2021
Received: 24 February 2021

Author Tags

  1. Chest X-ray image
  2. Optimized saliency detection
  3. Multi-scale decomposition
  4. Sparse representation
  5. Multi-weight-based cost function
  6. Economic development

Qualifiers

  • Research-article

Funding Sources

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • 0
    Total Citations
  • 0
    Total Downloads
  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 24 Nov 2024

Other Metrics

Citations

View Options

View options

Login options

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media