Characterization of oats (Avena sativa L.) cultivars using machine vision

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Abstract

Machine vision or image analysis is an important tool in the study of morphology of any materials. This technique has been used successfully to differentiate the eleven oats cultivars based on morphological characters. The geometry of seeds was measured through image analyzer and the variation was observed and recorded. From the recorded data, the cluster analysis was carried out and it revealed that the cultivars could be grouped into two main clusters based on similarity in the measured parameters. Cultivar Sabzar, UPO 212, OL 9 and OL 88 formed one main cluster. The another main cluster includes cv. Kent, OS 6, UPO 94, HFO 114, OS 7, HJ 8 and JHO 822 with many sub clusters. Among the cultivars HJ 8 and JHO 822 has more similarity in all measured parameters than other cultivars. Thus morphological characterization through seed image analysis was found useful to discriminate the cultivars. © 2013 Asian Network for Scientific Information.

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Sumathi, S., & Balamurugan, P. (2013). Characterization of oats (Avena sativa L.) cultivars using machine vision. Pakistan Journal of Biological Sciences, 16(20), 1179–1183. https://doi.org/10.3923/pjbs.2013.1179.1183

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