Design and Development of Sugarcane Maturity Identifier through Phenotypes via Image Processing

Alnie Mae Aderes, Harold Combalicer, Jose Rico Garcia, Alyssa Miranda, Hannah Nicole Pedrosa, Arjay Yabut, Rommel M. Anacan, Josephine L. Bagay
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Abstract

Most of the world's sugar demand comes from sugarcane. Sugarcane is the most produced crop globally and one of the major crops in the Philippines. The Philippines' sugarcane industry shows a decrease in the total annual production. Maturity is one factor that affects yield and, eventually, production. Sugarcane must be harvested at the proper age (peak maturity) to maximize sugar output. Among the different approaches to identify maturity, use the physical and physiological aspects. Approaches effects lead to the design and development of a system that will determine maturity through phenotypes via image processing. The system will process images of the sugarcane varieties of the Philippines, using Raspberry Pi and send/receive them using Long Range Wide Area Network (LoRa WAN). Pythons' object detection algorithm, specifically Faster Region-based Convolutional Neural Network (Faster R-CNN) and pre-trained models in TensorFlow, are used to identify maturity. The results have shown that the system performs well in identifying maturity and has excellent potential to be used in sugarcane production, which eventually increases sugar production.
基于图像处理的甘蔗表型成熟标识的设计与开发
世界上大部分的糖需求来自甘蔗。甘蔗是全球产量最高的作物,也是菲律宾的主要作物之一。菲律宾甘蔗产业的年总产量呈现下降趋势。成熟度是影响产量并最终影响产量的一个因素。甘蔗必须在适当的年龄(成熟的高峰期)收获,以最大限度地提高糖的产量。在识别成熟度的不同方法中,使用生理和生理方面的方法。方法效应导致系统的设计和开发,该系统将通过图像处理通过表型来确定成熟度。该系统将使用树莓派处理菲律宾甘蔗品种的图像,并通过远程广域网(LoRa WAN)发送/接收图像。python的对象检测算法,特别是Faster基于区域的卷积神经网络(Faster R-CNN)和TensorFlow中的预训练模型,用于识别成熟度。结果表明,该系统具有较好的成熟度识别能力,具有很好的应用潜力,可用于甘蔗生产,最终提高甘蔗产量。
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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