葡萄采收时机判断支持系统的开发

Tatsuyoshi Amemiya, Kodai Akiyama, Chee Siang Leow, Prawit Buayai, K. Makino, Xiaoyang Mao, H. Nishizaki
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引用次数: 0

摘要

葡萄串的颜色是在适当的时机收获葡萄的一个重要因素。判断适合装运的颜色需要经验,因人而异。本文描述了一种基于颜色估计的葡萄收获支持系统。为了估计一串葡萄的颜色,需要进行串检测、粒检测、去除病粒和颜色估计。这一系列过程采用了基于深度学习的模型。由于颜色受阳光的强烈影响,我们提出了一个考虑阳光照射的多任务模型,以实现对阳光敏感度降低的鲁棒颜色估计模型。结果表明,该模型在不考虑光照条件下的颜色估计精度为76%,考虑光照条件下的颜色估计精度为81%。此外,我们在一个实际的葡萄田对开发的收获支撑系统进行了实际的田间试验。结果表明,该支持系统对葡萄采收适宜性的判断准确率达到90%,证明了该支持系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Support System for Judging the Appropriate Timing for Grape Harvesting
The color of grape bunches is a significant factor when harvesting grapes at the appropriate timing. Judging the suitable color for shipment requires experience and varies from one person to another. We herein describe a support system for grape harvesting based on color estimation. To estimate the color of a bunch of grapes, bunch detection, grain detection, removal of diseased grains, and color estimation should be performed. Models based on deep learning are employed for this series of processes. Since color is strongly affected by sunlight, we propose a multitask model that considers sunlight exposure to achieve a robust color estimation model that exhibits decreased sensitivity to sunlight. Our results show that the color estimation accuracy of the model is 76% when sunlight exposure is not considered and 81% when sunlight exposure is considered. In addition, we performed a practical field test of the developed harvest support system in an actual grape field. The results show that our support system can determine the appropriateness of grape harvest with an accuracy of 90%, demonstrating the effectiveness of the system.
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