2018
DOI: 10.48550/arxiv.1811.09561
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An Adaptive Approach for Automated Grapevine Phenotyping using VGG-based Convolutional Neural Networks

Abstract: In (grapevine) breeding programs and research, periodic phenotyping and multi-year monitoring of different grapevine traits, like growth or yield, is needed especially in the field. This demand imply objective, precise and automated methods using sensors and adaptive software. This work presents a proof-of-concept analyzing RGB images of different growth stages of grapevines with the aim to detect and quantify promising plant organs which are related to yield.The input images are segmented by a Fully Convoluti… Show more

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