Integrating AI detection and language models for real-time pest management in Tomato cultivation.

IF 4.1 2区 生物学 Q1 PLANT SCIENCES Frontiers in Plant Science Pub Date : 2025-02-21 eCollection Date: 2024-01-01 DOI:10.3389/fpls.2024.1468676
Yavuz Selim Şahin, Nimet Sema Gençer, Hasan Şahin
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Abstract

Tomato (Solanum lycopersicum L.) cultivation is crucial globally due to its nutritional and economic value. However, the crop faces significant threats from various pests, including Tuta absoluta, Helicoverpa armigera, and Leptinotarsa decemlineata, among others. These pests not only reduce yield but also increase production costs due to the heavy reliance on pesticides. Traditional pest detection methods are labor-intensive and prone to errors, necessitating the exploration of advanced techniques. This study aims to enhance pest detection in tomato cultivation using AI-based detection and language models. Specifically, it integrates YOLOv8 for detection and segmentation tasks and ChatGPT-4 for generating detailed, actionable insights on the detected pests. YOLOv8 was chosen for its superior performance in agricultural pest detection, capable of processing large volumes of data in real-time with high accuracy. The methodology involved training the YOLOv8 model with images of various pests and plant damage. The model achieved a precision of 98.91%, recall of 98.98%, mAP50 of 98.75%, and mAP50-95 of 97.72% for detection tasks. For segmentation tasks, precision was 97.47%, recall 98.81%, mAP50 99.38%, and mAP50-95 95.99%. These metrics demonstrate significant improvements over traditional methods, indicating the model's effectiveness. The integration of ChatGPT-4 further enhances the system by providing detailed explanations and recommendations based on detected pests. This approach facilitates real-time expert consultation, making pest management accessible to untrained producers, especially in remote areas. The study's results underscore the potential of combining AI-based detection and language models to revolutionize agricultural practices. Future research should focus on training these models with domain-specific data to improve accuracy and reliability. Additionally, addressing the computational limitations of personal devices will be crucial for broader adoption. This integration promises to democratize information access, promoting a more resilient, informed, and environmentally conscious approach to farming.

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整合人工智能检测和语言模型,实现番茄种植病虫害的实时治理。
番茄(Solanum lycopersicum L.)由于其营养和经济价值,在全球范围内的种植至关重要。然而,这种作物面临着各种害虫的严重威胁,包括绝对土虱、棉铃虫和十二瘦虫等。由于严重依赖农药,这些害虫不仅降低了产量,而且增加了生产成本。传统的害虫检测方法劳动强度大,容易出错,需要探索先进的技术。本研究旨在利用基于人工智能的检测和语言模型来提高番茄种植中有害生物的检测。具体来说,它集成了用于检测和分割任务的YOLOv8和用于生成检测到的害虫的详细的、可操作的见解的ChatGPT-4。选择YOLOv8是由于其在农业害虫检测方面的卓越性能,能够实时、高精度地处理大量数据。该方法包括用各种害虫和植物损害的图像训练YOLOv8模型。对于检测任务,该模型的准确率为98.91%,召回率为98.98%,mAP50为98.75%,mAP50-95为97.72%。对于分割任务,准确率为97.47%,召回率为98.81%,mAP50为99.38%,mAP50-95为95.99%。这些指标显示了相对于传统方法的显著改进,表明了模型的有效性。ChatGPT-4的集成通过提供基于检测到的害虫的详细解释和建议进一步增强了系统。这种方法有助于实时专家咨询,使未经培训的生产者,特别是在偏远地区的生产者能够进行有害生物管理。这项研究的结果强调了将基于人工智能的检测和语言模型相结合以彻底改变农业实践的潜力。未来的研究应侧重于用特定领域的数据训练这些模型,以提高准确性和可靠性。此外,解决个人设备的计算限制将是更广泛采用的关键。这种整合有望使信息获取民主化,促进更有弹性、更知情、更环保的农业方法。
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来源期刊
Frontiers in Plant Science
Frontiers in Plant Science PLANT SCIENCES-
CiteScore
7.30
自引率
14.30%
发文量
4844
审稿时长
14 weeks
期刊介绍: In an ever changing world, plant science is of the utmost importance for securing the future well-being of humankind. Plants provide oxygen, food, feed, fibers, and building materials. In addition, they are a diverse source of industrial and pharmaceutical chemicals. Plants are centrally important to the health of ecosystems, and their understanding is critical for learning how to manage and maintain a sustainable biosphere. Plant science is extremely interdisciplinary, reaching from agricultural science to paleobotany, and molecular physiology to ecology. It uses the latest developments in computer science, optics, molecular biology and genomics to address challenges in model systems, agricultural crops, and ecosystems. Plant science research inquires into the form, function, development, diversity, reproduction, evolution and uses of both higher and lower plants and their interactions with other organisms throughout the biosphere. Frontiers in Plant Science welcomes outstanding contributions in any field of plant science from basic to applied research, from organismal to molecular studies, from single plant analysis to studies of populations and whole ecosystems, and from molecular to biophysical to computational approaches. Frontiers in Plant Science publishes articles on the most outstanding discoveries across a wide research spectrum of Plant Science. The mission of Frontiers in Plant Science is to bring all relevant Plant Science areas together on a single platform.
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