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Método para la corrección generalizada de reflectancia en imágenes hiperespectrales de frutos con superficies redondeadas: Estudio en mango variedad Kent

Translated title of the contribution: Method for generalized reflectance correction in hyperspectral images of fruits with rounded surfaces: Study on mango Kent variety
  • Wilson Castro-Silupu
  • , Erika Quinde-Flores
  • , Brenda Acevedo-Juarez
  • , Jezreel Mejia-Miranda
  • , Adriano Bruno-Tech
  • , Himer Avila-George

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Hyperspectral imaging has shown its potential in food quality determination in the last two decades. However, there are still several significant challenges to solve, such as non-uniformity in reflectance due to food geometry. The objective of this work is to propose a generalized reflectance correction method for hyperspectral images of fruits. To evaluate the proposed method was established as a case study the prediction of total soluble solids in mango fruit (Mangifera indica L) Kent variety. Therefore, hyperspectral images of the fruit were acquired in a range of 398 to 1004 nm. A hyperspectral image correction method was implemented and compared with the Lambertian surface correction method based on the correlation between position and point reflectance. The images corrected by both methods were used to determine the soluble solids content. Both methods showed differences in their results in the presence or not of excessive illumination in some parts of the samples, especially those obtained by the Lambertian method. When the images were used for soluble solids prediction, the results showed $R_{CV}^2 = 0,79$ and ECMcv = 0,094 using the proposed method and $R_{CV}^2 = 0,84$ and ECMcv = 0,074 with the Lambertian method. In conclusion, the proposed method showed improvements in the correction of samples with rounded geometries, being possible its generalization as a previous step to the development of models for the determination of quality parameters. However, differences between predictions do not exist due to the use of mean values. In future work, the proposed pretreatment will be tested in classification processes.

Translated title of the contributionMethod for generalized reflectance correction in hyperspectral images of fruits with rounded surfaces: Study on mango Kent variety
Original languageSpanish
Title of host publicationApplications in Software Engineering - Proceedings of the 10th International Conference on Software Process Improvement, CIMPS 2021
EditorsMirna A. Munoz Mata, Karina Figueroa, Lisbeth Rodriguez-Mazahua, Vanessa Maribel Morales Ibarra
PublisherInstitute of Electrical and Electronics Engineers Inc.
Pages140-146
Number of pages7
ISBN (Electronic)9781728195155
DOIs
StatePublished - 2021
Event10th International Conference on Software Process Improvement, CIMPS 2021 - Torreon, Coahuila, Mexico
Duration: 20 Oct 202122 Oct 2021

Publication series

NameApplications in Software Engineering - Proceedings of the 10th International Conference on Software Process Improvement, CIMPS 2021

Conference

Conference10th International Conference on Software Process Improvement, CIMPS 2021
Country/TerritoryMexico
CityTorreon, Coahuila
Period20/10/2122/10/21

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