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BASAL STEM ROT (bsr) DISEASE DETECTION AT DIFFERENT SEVERITY LEVELS OF INFECTIONS USING MACHINE LEARNING WITH VEGETATION INDICES AND THERMAL IMAGERY
1 , * 1 , 1 , 2
1  Universiti Putra Malaysia
2  FELCRA Berhad
Academic Editor: Cedric Spinnler

Abstract:

The oil palm industry in Malaysia experienced substantial growth in 2021, reaching over 5.7 million ha [1]. However, G. boninense pathogen causing basal stem rot (BSR) disease has posed a severe threat to the industry.

Remote sensing, particularly through ground-based [2,3], airborne [4] and satellite platforms [5], has shown promise in efficiently detecting the BSR disease. Ground-based sensing is impractical for big plantations and has limited data coverage. Satellite images are limited since Malaysia's location at the equator makes it hard to have a cloudless sky. Hence, this study proposes a solution to the threat of BSR disease by leveraging unmanned aerial vehicles (UAVs) equipped with multispectral and thermal sensors, combined with machine learning techniques.

Keywords: basal stem rot, oil palm, multispectral, thermal reflectance, vegetation index, machine learning
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