The Human Impact on Nutrition Education and Dietary Habits

Authors

  • A. M. Rangaraj  Associate Professor, Department of MCA, Sri Venkateswara College of Engineering and Technology, Chittoor, Andhra Pradesh,, India
  • A. Sumasri  Department of MCA, Sri Venkateswara College of Engineering and Technology, Chittoor, Andhra Pradesh,, India
  • C Sai Krishna  Department of MCA, Sri Venkateswara College of Engineering and Technology, Chittoor, Andhra Pradesh,, India
  • K. Prashanth  Department of MCA, Sri Venkateswara College of Engineering and Technology, Chittoor, Andhra Pradesh,, India

Keywords:

Deep learning, CNN, Transfer Learning, Grocery Dataset, Classification.

Abstract

Deep neural networks have been developed in recent years to solve exceedingly complicated computer vision categorization challenges. Although the results obtained with these classifiers are frequently excellent, there are some industries that require better precision from these systems. Increasing Ensemble learning, which integrates several methods, can improve the accuracy of neural networks. Classifiers with the goal of picking a winner based on various characteristics about them These strategies have Despite the fact that they include distinct types of training models and can even produce over fitting with respect to the training data, hence datasets must be carefully selected the outcome. In this research, we are using the different transfer learning CNN algorithms applied on the grocery dataset. Once after considering the grocery dataset the preprocessing is performed and then the transfer learning algorithms are used for training the data and then the visualizations of confusion matrix along with accuracy and loss plots. Where we have used multiple transfer learning algorithms, we can select different models during the output checking.

References

  1. L. Wang, Support Vector Machines: Theory and Applications, vol. 177. Cham, Switzerland: Springer, 2005.
  2. M. Klasson, C. Zhang, and H. Kjellstrom, ‘‘A hierarchical grocery store image dataset with visual and semantic labels,’’ in Proc. IEEE Winter Conf. Appl. Comput. Vis. (WACV), Jan. 2019, pp. 491–500.
  3. D. Xue, X. Zhou, C. Li, Y. Yao, M. M. Rahaman, J. Zhang, H. Chen, J. Zhang, S. Qi, and H. Sun, ‘‘An application of transfer learning and ensemble learning techniques for cervical histopathology image classification,’’ IEEE Access, vol. 8, pp. 104603–104618, 2020.
  4. A. Manna, R. Kundu, D. Kaplun, A. Sinitca, and R. Sarkar, ‘‘A fuzzy rankbased ensemble of CNN models for classification of cervical cytology,’’ Sci. Rep., vol. 11, no. 1, pp. 1–18, Dec. 2021.
  5. M. S. Advani, A. M. Saxe, and H. Sompolinsky, ‘‘High-dimensional dynamics of generalization error in neural networks,’’ Neural Netw., vol. 132, pp. 428–446, Dec. 2020.
  6. Y. Xu and R. Goodacre, ‘‘on splitting training and validation set: A comparative study of cross-validation, bootstrap and systematic sampling for estimating the generalization performance of supervised learning,’’ J. Anal. Test., vol. 2, no. 3, pp. 249–262, Jul. 2018.
  7. M. M. Badža and M. Č. Barjaktarović, ‘‘Classification of brain tumors from MRI images using a convolutional neural network,’’ Appl. Sci., vol. 10, no. 6, p. 1999, Mar. 2020.
  8. M. Filax, T. Gonschorek, and F. Ortmeier, ‘‘Grocery recognition in the wild: A new mining strategy for metric learning,’’ in Proc. 16th Int. Joint Conf. Comput. Vis., Imag. Comput. Graph. Theory Appl., 2021, pp. 498–505.
  9. J. Naranjo-Torres, M. Mora, R. Hernández-García, R. J. Barrientos, C. Fredes, and A. Valenzuela, ‘‘A review of convolutional neural network applied to fruit image processing,’’ Appl. Sci., vol. 10, no. 10, p. 3443, May 2020.
  10. Z.-H. Zhou, ‘‘Ensemble learning,’’ in Machine learning. Cham, Switzerland: Springer, 2021, pp. 181–210.
  11. O. Sagi and L. Rokach, ‘‘Ensemble learning: A survey,’’ WIREs Data Mining Knowl. Discovery, vol. 8, no. 4, Jul. 2018, Art. no. e1249
  12. X. Dong, Z. Yu, W. Cao, Y. Shi, and Q. Ma, ‘‘A survey on ensemble learning,’’ Frontiers Comput. Sci., vol. 14, no. 2, pp. 241–258, 2020.
  13. D. Burka, C. Puppe, L. Szepesváry, and A. Tasnádi, ‘‘Voting: A machine learning approach,’’ Eur. J. Oper. Res., vol. 299, no. 3, pp. 1003–1017, Jun. 2022.
  14. S. Zheng, P. Qi, S. Chen, and X. Yang, ‘‘Fusion methods for CNN-based automatic modulation classification,’’ IEEE Access, vol. 7, pp. 66496–66504, 2019.
  15. E.-S. M. El-kenawy, A. Ibrahim, S. Mirjalili, M. M. Eid, and S. E. Hussein, ‘‘Novel feature selection and voting classifier algorithms for COVID-19 classification in CT images,’’ IEEE Access, vol. 8, pp. 179317–179335, 2020.

Downloads

Published

2022-11-30

Issue

Section

Research Articles

How to Cite

[1]
A. M. Rangaraj, A. Sumasri, C Sai Krishna, K. Prashanth, " The Human Impact on Nutrition Education and Dietary Habits" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 8, Issue 6, pp.20-28, November-December-2022.