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- Title
Segmentation of RGB images using different vegetation indices and thresholding methods.
- Authors
AURELIANO NETTO, Abdon Francisco; Nogueira MARTINS, Rodrigo; de SOUZA, Guilherme Silverio Aquino; de Moura ARAÚJO, Guilherme; de ALMEIDA, Samira Luns Hatum; Agnolette CAPELINI, Vinicius
- Abstract
Image Segmentation is one of the fundamental aspects involved in image processing, which generally consists of discriminating objects of interest from its background. Thus, the objective of this study was to evaluate the effect of vegetation indices (VI) (ExG, ExGR, and NDI) on the performance of three automated thresholding methods (Otsu, Ridler, and Triangle) in terms of accuracy and processing time on image segmentation. A set of 30 images from an area cultivated with maize under different types of soil cover (conventional planting, no-tillage with coffee husk, and straw residue) were selected and processed. The images were processed through algorithms developed based on VI and thresholding methods. Then, the accuracy of the resulting images was evaluated through the ground truth image obtained by the K-means algorithm. The results demonstrated superior performance for the triangle method when preceded by the NDI (90.7%) and ExGR (90.23%) indices and the Otsu and Ridler methods when preceded by the NDI with 89.06% and 89.03% accuracy, respectively. The processing time was statistically equal among the evaluated methods. In general, the combined approach of VI and thresholding based methods were capable of separating with high accuracy the maize crop from the background.
- Subjects
VEGETATION management; IMAGE segmentation; K-means clustering; ALGORITHMS; DIGITAL image processing
- Publication
Nativa, 2018, Vol 6, Issue 4, p389
- ISSN
2318-7670
- Publication type
Article
- DOI
10.31413/nativa.v6i4.5405