Affiliation:
1. Instituto Tecnológico de Ciudad Valles
Abstract
The raw cane sugar industry in Huasteca Potosina, Mexico represents a growing market nationwide and globally. Mexico exports to the US, Europe and Japan with below rate such as a country like India, Colombia or Brazil. The little technification of this sector in the region is considered as a factor of the delays in the agro industry development. The Technological Institute of Ciudad Valles currently conducts researches for the evaluation of two of the quality characteristics of the raw cane sugar: color and texture; exploiting the computer sciences through image processing. This project defines the development of an information system through the iWeb methodology and data mining techniques to provide the information that characterizes the raw cane sugar as a quality product. With the systematization of processes for quality control, it is possible to provide direct information that supports decision-making and favors the growth of the industry towards global markets. Incorporating characteristics of information portability, ability to have reliable data on product evaluation and statistical representation of defects; becoming a support tool for the improvement of the raw cane sugar industry.
Reference14 articles.
1. Aguilar-Torres, M. A., & Cornelio, Y. (2008). A real time artificial vision implementation for quality inspection of industrial products. InElectronics, Robotics and Automotive Mechanics Conference. IEEE, 277-282.
2. Armesto, L., Tornero, J., Herraez, A., & Asensio, J. (2011). Inspection system based on artificial vision for paint defects detection on cars bodies. InRobotics and Automation (ICRA). IEEE International Conference, 1-4.
3. Berenguel Gómez, J. L. (2015). Desarrollo de aplicaciones web en el entorno servidor. España: Paraninfo.
4. Contreras Castañeda, M. Á. (2016). Desarrollo de aplicaciones Web multiplataforma. España: Ministerio de Educación.
5. Fernandez, Y. E., Sariňana, A., & Swenson, R. L. (2009). Development of a prototype for classification of potato mini-tubers based on artificial vision. In Electrical Engineering, Computing Science and Automatic Control. (págs. 1-6). IEEE.