Automated mango flowering assessment via refinement segmentation
conference contribution
posted on 2018-03-08, 00:00 authored by Zhenglin WangZhenglin Wang, Brijesh Verma, Kerry WalshKerry Walsh, Phul Subedi, Anand KoiralaAnand KoiralaAn automated flowering assessment system for mango orchards was proposed. Segmentation of flowers from a complex background (i.e. leaves, branches and ground) was achieved based on (i) colour correction via adjustment of the brightness and contrast to a reference level, to rectify the illumination variability spatially within and between images; (ii) colour thresholding with fixed thresholds to separate flowers, although with some branches and trunks; and (iii) SVM classification to refine the segmentation results, removing the branch and trunk errors. Mango tree canopy images (n=160) were acquired during a five-week flowering period, with 15 of the images used in calibration and 145 used in validation. The proposed method had a good correlation with human scoring, with coefficient of determination (R2) of 0.87. © 2016 IEEE.
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Editor
Bailey D; Gupta GS; Marsland SStart Page
66End Page
71Number of Pages
6Start Date
2016-11-21Finish Date
2016-11-22eISSN
2151-2205ISSN
2151-2191ISBN-13
9781509027484Location
Palmerston North, New ZealandPublisher
IEEEPlace of Publication
Piscataway, NJPublisher DOI
Peer Reviewed
- Yes
Open Access
- No
Author Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
Name of Conference
International Conference on Image and Vision Computing New Zealand (IVCNZ)Usage metrics
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