Computer Vision: A Timely Opportunity

Authors

  • Takudzwa Fadziso Chinhoyi University of Technology

DOI:

https://doi.org/10.18034/ei.v9i2.571

Keywords:

Computerized navigation, concurrent computing, computer vision movement

Abstract

Different approaches to the study of computer vision have been taken into consideration. It begins with the collection of raw data and advances to methodologies and ideas that combine digital images, pattern recognition, machine learning, and computer graphics to produce new products, as well as new products themselves. In order to get crucial information, students can analyze images and videos to interpret events or descriptions, as well as discern patterns in the landscape, using computer vision. It makes use of a multi-spectrum application domain strategy in conjunction with a large amount of data in order to achieve its goals. In recent years, technological developments in computer vision have paved the way for the creation of novel agricultural applications. Precision yield forecasts for fruit and vegetable crops are particularly critical for improving harvesting, marketing, and logistics planning and execution. When a bridge is under stress or has a high volume of traffic, the geographical and temporal information provided by cars on the bridge reflects this. It is proposed to design a methodology for information gathering and dissemination by utilizing computer vision technology, which recognizes various items tracking and picture calibration via a quick regional neural convolution network, and a quick regional neural convolution network (Faster R-CNN). When dealing with small fish populations, it can be difficult to objectively assess the differences in behavior between individuals. The behavior of fish in aquaculture tanks has been studied with the use of a computer vision system that has been built in order to quantify these types of observations. Contained traffic load data is essential for bridge statistical analysis, security evaluation, and maintenance planning. This is particularly true for heavy trucks. From retail to agriculture, and across all industries, computer vision is having a big impact on organizations of all sizes and in all sectors. When a human eye is required to assess the situation, the significance of this becomes even more apparent. This paper provides information about computer vision technology, including short algorithms, issues, opportunities, and applications for computer vision in a range of fields in the year 2021, as well as information on computer vision in general. Information about computer vision applications in many fields is also included for the year 2021.

Downloads

Download data is not yet available.

Author Biography

  • Takudzwa Fadziso, Chinhoyi University of Technology

    Institute of Lifelong Learning and Development Studies, Chinhoyi University of Technology, ZIMBABWE

References

Ahmed, A. A. A.; Paruchuri, H.; Vadlamudi, S.; & Ganapathy, A. (2021). Cryptography in Financial Markets: Potential Channels for Future Financial Stability. Academy of Accounting and Financial Studies Journal, 25(4), 1–9. https://doi.org/10.5281/zenodo.4774829

Amadasun, M., & King, R. (1989). Textural features corresponding to textural properties. IEEE Transactions on Systems, Man, and Cybernetics, 19(5), 1264–1274

Bakirtzis, A., and Spyros, K. (2016). Genetic algorithms. Advanced Solutions in Power Systems: HVDC, FACTS, and Artificial Intelligence: HVDC, FACTS, and Artificial Intelligence, 845-902. DOI: https://doi.org/10.1002/9781119175391

Blasco, J., Aleixos, N., Moltó, E. (2003). Machine vision system for automatic quality grading of fruit. Biosystems Engineering, 85(4), 415–423.

Bynagari , N. B. (2020). The Difficulty of Learning Long-Term Dependencies with Gradient Flow in Recurrent Nets. Engineering International, 8(2), 127-138. https://doi.org/10.18034/ei.v8i2.570

Bynagari, N. B. (2018). On the ChEMBL Platform, a Large-scale Evaluation of Machine Learning Algorithms for Drug Target Prediction. Asian Journal of Applied Science and Engineering, 7, 53–64. Retrieved from https://upright.pub/index.php/ajase/article/view/31

Bynagari, N. B. (2019). GANs Trained by a Two Time-Scale Update Rule Converge to a Local Nash Equilibrium. Asian Journal of Applied Science and Engineering, 8, 25–34. Retrieved from https://upright.pub/index.php/ajase/article/view/32

Bynagari, N. B., & Amin, R. (2019). Information Acquisition Driven by Reinforcement in Non-Deterministic Environments. American Journal of Trade and Policy, 6(3), 107-112. https://doi.org/10.18034/ajtp.v6i3.569

Bynagari, N. B., & Fadziso, T. (2018). Theoretical Approaches of Machine Learning to Schizophrenia. Engineering International, 6(2), 155-168. https://doi.org/10.18034/ei.v6i2.568

Chtioui, Y., Panigrahi, S., Backer, L. F. (2003). Self-organizing map combined with a fuzzy clustering for color image segmentation. Transactions of the ASAE, 46(3), 831–838.

Du, C-J, & Sun D-W. (2006). Automatic measurement of pores and porosity in pork ham and their correlations with processing time, water content and texture. Meat Science, 72(2), 294–302.

Ganapathy, A., Hossain, M. S., Rahman, M. M., Asadullah, ABM., Amin, R. (2021b). The Significant of Biases in Learning Algorithms Generalization. International Journal of Aquatic Science, 12(2), 3042-3052. http://www.journal-aquaticscience.com/article_134827.html

Ganapathy, A., Vadlamudi, S., Ahmed, A. A. A., Hossain, M. S., Islam, M. A. (2021a). HTML Content and Cascading Tree Sheets: Overview of Improving Web Content Visualization. Turkish Online Journal of Qualitative Inquiry, 12(3), 2428-2438. https://www.tojqi.net/index.php/journal/article/view/1724

Khan, W., Ahmed, A. A. A., Vadlamudi, S., Paruchuri, H., Ganapathy, A. (2021). Machine Moderators in Content Management System Details: Essentials for IoT Entrepreneurs. Academy of Entrepreneurship Journal, 27(3), 1-11. https://doi.org/10.5281/zenodo.4972587

Kleynen, O., Leemans, V., Destain, M-F. (2005). Development of a multi-spectral vision system for the detection of defects on apples. Journal of Food Engineering, 69(1), 41–49.

Leemans, V., Magein, H., & Destein, M-F. (1999). Defect segmentation on ‘Jonagold’ apples using color vision and a Bayesian classification method. Computers and Electronics in Agriculture, 23(1), 43–53.

Marique, T., Pennincx, S., Kharoubi, A. (2005). Image segmentation and bruise identification on potatoes using a Kohonen’s self-organizing map. Journal of Food Science, 70(7), E415–E417.

Matiacevich, S., Celis Cofré, D., Silva, P., Enrione, J., Osorio, F. (2013). Quality Parameters of Six Cultivars of Blueberry Using Computer Vision. International Journal of Food Science. https://doi.org/10.1155/2013/419535

Nandakumar, V., Hansen, N., Glenn, H. L., Han, J. H., Helland, S., Hernandez, K., Senechal, P., Johnson, R. H., Bussey, K. J. and Meldrum, D. R. (2016). Vorinostat differentially alters 3D nuclear structure of cancer and non-cancerous esophageal cells. Scientific reports 6. https://doi.org/10.1038/srep30593

Neogy, T. K., & Bynagari, N. B. (2018). Gradient Descent is a Technique for Learning to Learn. Asian Journal of Humanity, Art and Literature, 5(2), 145-156. https://doi.org/10.18034/ajhal.v5i2.578

Patel, K. K., Kar, A., Jha, S. N., and Khan, M. A. (2012). Machine vision system: a tool for quality inspection of food and agricultural products. Journal of food science and technology, 49(2), 123-141. https://doi.org/10.1007/s13197-011-0321-4

Zheng, C., Sun, D-W., Zheng, L. (2006). Recent applications of image texture for evaluation of food qualities – a review. Trends in Food Science & Technology, 17(3), 113–128.

--0--

Downloads

Published

2021-09-02

Issue

Section

Peer Reviewed Articles

How to Cite

Fadziso, T. . (2021). Computer Vision: A Timely Opportunity. Engineering International, 9(2), 111-128. https://doi.org/10.18034/ei.v9i2.571