基于 AMR 和实体识别的农业测量和控制自然语言指令解析

Weihao Yuan, Mengdao Yang, Hexu Gu, Gaojian Xu
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引用次数: 0

摘要

农业测量和控制系统的用户交互性有待提高,用户通常需要经过培训才能成功执行特定操作。随着自然语言语义处理技术的不断发展,在农业测量和控制领域提高多方面控制和查询操作的用户友好性,最终降低用户的操作成本已变得至关重要。本研究旨在重点研究命令解析。所提出的 AMR-OPO 语义解析框架基于根标记图抽象意义表示(AMR)的自然语言理解方法。它将用户的自然语言输入转换为结构化三元(OPO)语句(操作-位置-对象),并转换用户输入命令的相应参数。随后,该框架通过物联网网关将转换后的命令发送到相关设备。为了处理复杂的指令解析任务,我们开发了一个 BERT-BiLSTM-ATT-CRF-OPO 实体识别模型。该模型可以检测和提取农业指令中的实体,并将其精确地填充到 OPO 语句中。我们的模型在指令解析方面表现出了卓越的准确性,精确度、召回率和 F 值分别达到 92.13%、93.12% 和 92.76%。实验结果表明,我们的方法具有出色而精确的性能。预计我们的算法将提升农业测控系统的用户体验,同时使其更加人性化。
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Natural language command parsing for agricultural measurement and control based on AMR and entity recognition
There is scope to enhance agricultural measurement and control systems user interactivity, which typically necessitates training for users to perform specific operations successfully. With the continuous development of natural language semantic processing technology, it has become essential to augment the user-friendliness of multifaceted control and query operations in the agricultural measurement and control sector, ultimately leading to reduced operation costs for users. The study aims to focus on command parsing. The proposed AMR-OPO semantic parsing framework is based on the natural language understanding method of Abstract Meaning Representation of Rooted Markup Graphs (AMR). It transforms the user’s natural language inputs into structured ternary (OPO) statements (operation-place-object) and converts the corresponding parameters of the user’s input commands. The framework subsequently sends the transformed commands to the relevant devices via the IoT gateway. To tackle the intricate task of parsing instructions, we developed a BERT-BiLSTM-ATT-CRF-OPO entity recognition model. This model can detect and extract entities from agricultural instructions, and precisely populate them into OPO statements. Our model shows exceptional accuracy in instruction parsing, with precision, recall, and F-value all measuring at 92.13%, 93.12%, and 92.76%, correspondingly. The findings from our experiment reveal outstanding and precise performance of our approach. It is anticipated that our algorithm will enhance the user experience offered by agricultural measurement and control systems, while also making them more user-friendly.
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