Article ID Journal Published Year Pages File Type
85164 Computers and Electronics in Agriculture 2008 10 Pages PDF
Abstract

We applied computer image analysis to group together flax cultivars (Linum usitatissimum L.) according to their similarity in commercially important dry seed traits. Both the seed shape and seed-color traits were tested on 53 cultivars from world germplasm collections.Four shape traits (Area, Perimeter, MeanChord, and MinFeret) and three color traits (L*, a*, b* calculated from original RGB color channels as CIE color space coordinates) were computer extracted from digital images of 62349 seeds with 1200 seeds per cultivar in average. Cultivar clustering was generated by two independent methods of multivariate analysis. Principal Component Analysis (PCA) was complemented by hierarchical clustering with Unweighted Pair Group Method with Arithmetic Mean (UPGMA). Significant multivariate clustering was obtained both by using non-reduced data set composed of all seven seed traits or by reduced data set made of only three color traits, while calculation with data set of only four seed-shape traits did not produce significant cultivar clusters.Based on the results we recommend that current qualitative sensorical seed descriptors routinely used for cultivar characterization may be supplemented by more informative continuous quantitative descriptors obtainable at low cost from dry flax seeds.

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Physical Sciences and Engineering Computer Science Computer Science Applications
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