A Low‐Cost Automated System for High‐Throughput Phenotyping of Single Oat Seeds

A single‐seed analyzer system was modified to provide low‐cost seed imaging. The system throughput allows rapid, nondestructive phenotyping of single seeds. Accuracy of seed shape and size measurements were similar to those obtained manually. Repeatability of morphometric seed traits was higher than that of seed color traits.

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