Smallholder farmer-centric integration of IoT and Chatbot for early Maize diseases detection and management in pre-visual symptoms phase

T. Maginga, Jimmy Nsenga, Pierre Bakunzibake, Emmanuel Masabo
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引用次数: 1

Abstract

Crop diseases are responsible for more than 50% of worldwide yield loss. Therefore, detecting crop diseases as soon as possible is important to limit both yield loss and costs involved in interrupting the disease cycles. Traditional disease detection sensors such as farmer eyes or crop imaging devices backed by Deep Neural Networks (DNN) models rely on visual symptoms which appear after the disease cycle has already undergone several asymptomatic phasing events such as inoculation, penetration, and so on. Recently, Internet of Things (IoT) sensors have been used to monitor other pre-visual abdominal signs generated by infected plants, like for instance emission of Volatile Organic Compound (VOC) or changes in soil nutrition consumption patterns. Considering the limited availability of extension officers to timely support farmers in early disease management, in this paper we propose an integrated framework that converges IoT sensing asymptomatic signs with natural language processing (NLP) chatbots to enable low literacy smallholder farmers of Maize crops in East-Africa to be completely autonomous in identifying and understanding their potential crop diseases prior to the apparition of visual symptoms.
以小农为中心的物联网和聊天机器人的集成,用于玉米疾病早期检测和视觉症状前阶段的管理
作物病害造成的产量损失占全球产量损失的50%以上。因此,尽快发现作物病害对于限制产量损失和中断病害周期所涉及的成本非常重要。传统的疾病检测传感器,如农民眼睛或深度神经网络(DNN)模型支持的作物成像设备,依赖于在疾病周期已经经历了无症状阶段事件(如接种,渗透等)后出现的视觉症状。最近,物联网(IoT)传感器已被用于监测受感染植物产生的其他视觉前腹部迹象,例如挥发性有机化合物(VOC)的排放或土壤营养消耗模式的变化。考虑到推广人员在早期疾病管理中及时支持农民的可用性有限,在本文中,我们提出了一个集成框架,该框架将物联网传感无症状迹象与自然语言处理(NLP)聊天机器人融合在一起,使东非低读写能力的玉米作物小农能够完全自主地识别和了解他们潜在的作物疾病,在视觉症状出现之前。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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