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Tea Acreage Estimation and Condition Assessment Using Satellite Data in Nilgiris District, Tamil Nadu

  • Vijaya Kumari Nunna
Conference paper

Abstract

In the present study, an attempt has been made to estimate acreage and condition of tea plantation by using satellite based digital remote sensing data in the Nilgiris district of Tamil Nadu. Temporal satellite data of MSS AND TM were used for identification of tea plantations. District boundary – overlaying approach with a complete enumeration of digital data were used for the estimation of tea acreage. NDVI images were generated to assess the condition and vigor of tea plantations. Results indicate that approximately 18,785 hectares of the forest area converted with a simultaneous increase in the area of tea plantations from 28,252 hectares to 47,038 hectares. Results of the present study indicate that improved Spatial and radiometric resolution of the Land sat satellite data can be advantageously utilized for differentiation of tea plantations and also an assessment of vigor of tea plantations. The impact of conversion of forests to plantations can have a long term adverse effects on the ecology and environmental conditions of the forest ecosystem.

Keywords

Tea plantation Acreage estimation NDVI Remote sensing 

Notes

Acknowledgements

The award of Senior Research Fellowship from Council of Scientific and Industrial Research (C.S.I.R.) is gratefully acknowledged.

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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  • Vijaya Kumari Nunna
    • 1
  1. 1.VNR Vignana Jyothi Institute of Engineering & TechnologyHyderabadIndia

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