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Artificial Intelligence to Identify the Nectar Site: A Deep Learning Approach

机译:人工智能识别花蜜网站:深度学习方法

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The rising standard of living has led people to pay more attention to the importance of natural foods. Honey as a nutritional product is beneficial to human health. At present, honey production mainly relies on nectar sites, however, due to temperature, humidity, the flowering period and plant growth status of nectar sites are difficult to be accurately grasped. In this paper, we propose a deep-learning nectar site identification model, which can distinguish nectar sites from non-nectar sites in real time at the macro level, and can accurately determine whether a field monopoly and nectar plants are in flowering stage at the micro level using satellite remote sensing data. It is important for grasping the distribution of nectar sites in real time and promoting the development of smart agriculture.
机译:生活水平上升导致人们更加关注天然食品的重要性。 蜂蜜作为营养产品有利于人体健康。 目前,蜂蜜产量主要依赖于花蜜部位,然而,由于温度,湿度,花蜜部位的开花期和植物生长状态难以准确地掌握。 在本文中,我们提出了一个深度学习的花蜜网站识别模型,可以在宏观水平实时区分从非花蜜网站的花蜜网站,并且可以准确地确定现场垄断和花蜜植物是否在开花阶段 使用卫星遥感数据的微观级别。 重要的是实时掌握花蜜网站的分布,促进智能农业的发展。

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