Potential of NIR computer vision technique for the detection of mango’s defects

NIR technique for detection of mango’s defects

Authors

  • KRISHNA KUMAR PATEL Post Graduate College, Ghazipur
  • ABHIJIT KAR Aligarh Muslim University, Aligarh 202002 (India)

DOI:

https://doi.org/10.21921/jas.v9i04.%2011595

Keywords:

Defect, Detection, Mango, NIR imaging

Abstract

Currently, research on computer vision technique is most prevalent for quality assessment of agricultural produce. This technique assists in achieving the specified objectives prior to sale of agricultural products in the global market. Defect detection is an important task during sorting and grading of mangoes. But, the colour camera based computer vision system (CVS) has been found unable to detect the hidden defects just below the peel of mangoes.  The near infra-red (NIR) camera, in contrast, can be used for identification of such defects. A semi-automatic NIR CVS was developed for inspection of hidden defects just underneath of the peel of mangoes. Image acquisition, image processing and image analysis are the main functions of developed NIR CVS. The NIR camera was used to capture standard image from the samples of Chausa fruits. Algorithm steps were developed for image processing and analysis of hidden defects. Water core, fungal infection and the defects on the surface of mangoes, which were hidden just below the peel, identified and quantified. The present study, thus, showed that the NIR CVS has potential for detection of hidden defects of mangoes. The semi-automatic CVS can be upgraded to fully automatic for commercial application.

Author Biographies

KRISHNA KUMAR PATEL, Post Graduate College, Ghazipur

Assistant Professor, Department of Agricultural Engineering

ABHIJIT KAR, Aligarh Muslim University, Aligarh 202002 (India)

Department of Post Harvest Engineering and Technology

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Published

2023-06-28