Assessment of Seed Quality with near Infrared Spectroscopy in Forestry/Agroforestry Sector- A Review

Assessment of Seed Quality with near Infrared Spectroscopy in Forestry/Agroforestry Sector- A Review

Authors

  •   C. Manoj   Forest Research Institute, New Forest, Dehradun, Uttarakhand
  •   Lokinder Sharma   Forest Research Institute, Dehradun, Uttarakhand
  •   G. S. uma   Forest Research Institute, Dehradun, Uttarakhand

DOI:

https://doi.org/10.36808/if/2024/v150i1/169828

Keywords:

NIR, Spectral Data, Vigour, Reflectance.

Abstract

Seed is one of the most essential components of the Forestry/Agro-forestry sector. The uniformity of development, yield, and quality of the harvested product are all significantly impacted by seed quality. The development of Near Infrared Spectroscopy instrumentation for spectral data collection, process monitoring, and spectral data analysis has resulted in a notable improvement for accurate and quick evaluation of seed characteristics with less labour cost. The fundamental idea behind NIR spectroscopy is to expose the sample to NIR light and then capture any reflected or transmitted light. The results of national and international research papers on the use of NIR spectroscopy on insect-infested seeds, vigorous seeds, aged seeds, seed source variation, and adulteration in oil seed have been compiled in this review paper. We found that spectral technology for seed quality analysis is ideal because it provides a quick, non-destructive, and low-cost method for analysing the specific characteristics of the various elements related to industry applications.

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Published

2024-01-01

How to Cite

Manoj, C., Sharma, L., & uma, G. S. (2024). Assessment of Seed Quality with near Infrared Spectroscopy in Forestry/Agroforestry Sector- A Review. Indian Forester, 150(1), 34–39. https://doi.org/10.36808/if/2024/v150i1/169828
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