Application of Convolution Neural Network for Digital Image Processing

Authors

  • Venkata Naga Satya Surendra Chimakurthi Solutions Architect, CDBDX-Platforms-DAM (Digital Asset Management), Cognizant Technology Solutions, Dallas, USA

DOI:

https://doi.org/10.18034/ei.v8i2.592

Keywords:

Image Processing, CNN, Digital Image Recognition, Machine Learning

Abstract

In order to train neural network algorithms for multiple machine learning tasks, like the division of distinct categories of objects, various deep learning approaches employ data. Convolutional neural networks deep learning algorithms are quite strong when it comes to image processing. With the recent development of multi-layer convolutional neural networks for high-level tasks like object recognition, object acquisition, and recent semantic classification, the field has seen great success in this approach. The two-phase approach is frequently employed in semantic segregation. In the second step of becoming a standard global graphical model, communication networks are educated to deliver good local intelligence with a pixel. Convolutional Neural Networks (CNN or ConvNet) are complicated neural server networks in the field of artificial intelligence. Because of their great accuracy, convolutional neural networks (CNNs) are frequently utilized in picture categorization and recognition. In the late 1990s, Yann LeCun, a computer scientist, was based on the human notion of cognition and came up with the idea. When constructing a network, CNN uses a hierarchical model that eventually results in a convolution layer in which all neurons are linked and output is processed. Using an example of an image processing application, this article demonstrates how the CNN architecture is implemented in its entirety. You can utilize this to better comprehend the advantages of this current photography website.

 

Downloads

Download data is not yet available.

References

Chimakurthi, V. N. S. S. (2017a). Cloud Security - A Semantic Approach in End to End Security Compliance. Engineering International, 5(2), 97-106. https://doi.org/10.18034/ei.v5i2.586

Chimakurthi, V. N. S. S. (2017b). Risks of Multi-Cloud Environment: Micro Services Based Architecture and Potential Challenges. ABC Research Alert, 5(3). https://doi.org/10.18034/abcra.v5i3.590

Chimakurthi, V. N. S. S. (2018). Emerging of Virtual Reality (VR) Technology in Education and Training. Asian Journal of Humanity, Art and Literature, 5(2), 157-166. https://doi.org/10.18034/ajhal.v5i2.606

Chimakurthi, V. N. S. S. (2019). Efficacy of Augmented Reality in Medical Education. Malaysian Journal of Medical and Biological Research, 6(2), 135-142. https://doi.org/10.18034/mjmbr.v6i2.609

Chimakurthi, V. N. S. S. (2019a). Implementation of Artificial Intelligence Policy in the Field of Livestock and Dairy Farm. American Journal of Trade and Policy, 6(3), 113-118. https://doi.org/10.18034/ajtp.v6i3.591

Chimakurthi, V. N. S. S. (2019b). Application Portfolio Profiling and Appraisal as Part of Enterprise Adoption of Cloud Computing. Global Disclosure of Economics and Business, 8(2), 129-142. https://doi.org/10.18034/gdeb.v8i2.610

Chua, L. O., & Roska, T. (1993). The CNN paradigm. IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications, 40(3), 147-156.

Crounse, K. R., & Chua, L. O. (1995). Methods for image processing and pattern formation in cellular neural networks: A tutorial. IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications, 42(10), 583-601.

Han, D., Liu, Q., & Fan, W. (2018). A new image classification method using CNN transfer learning and web data augmentation. Expert Systems with Applications, 95, 43-56.

Hussain, M., Bird, J. J., & Faria, D. R. (2018). A study on cnn transfer learning for image classification. Paper presented at the UK Workshop on computational Intelligence.

Lee, H., & Kwon, H. (2017). Going deeper with contextual CNN for hyperspectral image classification. IEEE Transactions on Image Processing, 26(10), 4843-4855.

Li, Q., Cai, W., Wang, X., Zhou, Y., Feng, D. D., & Chen, M. (2014). Medical image classification with convolutional neural network. Paper presented at the 2014 13th international conference on control automation robotics & vision (ICARCV).

Liu, M. C., Dubé, L. M., Lancaster, J., & Group, Z. (1996). Acute and chronic effects of a 5-lipoxygenase inhibitor in asthma: a 6-month randomized multicenter trial. Journal of Allergy and Clinical Immunology, 98(5), 859-871.

Perez-Munuzuri, V., Perez-Villar, V., & Chua, L. O. (1993). Autowaves for image processing on a two-dimensional CNN array of excitable nonlinear circuits: flat and wrinkled labyrinths. IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications, 40(3), 174-181.

Potluri, S., Fasih, A., Vutukuru, L. Kishore, A. M. F., & Kyamakya, K. (2011). CNN based high performance computing for real time image processing on GPU. Paper presented at the Proceedings of the Joint INDS'11 & ISTET'11.

Ren, X., Guo, H., Li, S., Wang, S., & Li, J. (2017). A novel image classification method with CNN-XGBoost model. Paper presented at the International Workshop on Digital Watermarking.

Wang, J., Yang, Y., Mao, J., Huang, Z., Huang, C., & Xu, W. (2016). Cnn-rnn: A unified framework for multi-label image classification. Paper presented at the Proceedings of the IEEE conference on computer vision and pattern recognition.

Williams, R. T. (2018). Confidence Interventions: Do They Work?. Asian Journal of Humanity, Art and Literature, 5(2), 123-134. https://doi.org/10.18034/ajhal.v5i2.536

Williams, R. T. (2020). A Systematic Review of the Continuous Professional Development for Technology Enhanced Learning Literature. Engineering International, 8(2), 61-72. https://doi.org/10.18034/ei.v8i2.506

Williams, R. T., & Scott, C. D. (2019). The Current State of Outdoor Learning in a U.K Secondary Setting: Exploring the Benefits, Drawbacks and Recommendations. ABC Journal of Advanced Research, 8(2), 109-122. https://doi.org/10.18034/abcjar.v8i2.537

Xie, W., Zhang, C., Zhang, Y., Hu, C., J., H., & Wang, Z. (2018). An energy-efficient FPGA-based embedded system for CNN application. Paper presented at the 2018 IEEE International Conference on Electron Devices and Solid State Circuits (EDSSC).

Zhang, M., Li, W., & Du, Q. (2018). Diverse region-based CNN for hyperspectral image classification. IEEE Transactions on Image Processing, 27(6), 2623-2634.

--0--

Downloads

Published

2020-12-31

Issue

Section

Peer Reviewed Articles

How to Cite

Chimakurthi, V. N. S. S. (2020). Application of Convolution Neural Network for Digital Image Processing. Engineering International, 8(2), 149-158. https://doi.org/10.18034/ei.v8i2.592