2024
DOI: 10.3390/agriculture14071135
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Automatic Identification of Sea Rice Grains in Complex Field Environment Based on Deep Learning

Ruoling Deng,
Weilin Cheng,
Haitao Liu
et al.

Abstract: The number of grains per sea rice panicle is an important parameter directly related to rice yield, and it is also a very important agronomic trait in research related to sea rice breeding. However, the grain number per sea rice panicle still mainly relies on manual calculation, which has the disadvantages of being time-consuming, error-prone, and labor-intensive. In this study, a novel method was developed for the automatic calculation of the grain number per rice panicle based on a deep convolutional neural … Show more

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