青苹果晒伤管理的可靠图像处理算法

Basavaraj R. Amogi, R. Ranjan, L. Khot
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摘要

为了解决天气的不确定性和与苹果果实相关的热胁迫,研究人员一直在探索开发一种实时作物胁迫监测系统。我们的团队一直在研究一种这样的现场传感系统,该系统使用局部天气和热rgb图像在边缘进行监测水果表面温度(FST)。这些解决办法可与缓解技术(例如水基冷却方法)结合起来,作为精确管理。然而,目前的边缘计算算法仅限于对接近成熟的红色水果进行热rgb图像的分割,缺乏对绿色水果的分割,限制了现场传感系统的可用性。本研究的目的是开发和验证一种独立于颜色的水果分割算法,以成功地监测FST。利用日最高气温下的长波红外(LWIR)图像实现温度梯度辅助水果分割,并估计未来24小时的FST。该算法的鲁棒性在Fog-Net(雾化和网状结合)冷却和控制处理(2021年)中进行了现场评估。总体而言,算法能够准确地检测到生长季早期果实的绿色,并基于FST数据有效地捕捉到处理效果。此外,该算法还在商业苹果园(2022年)部署的现场传感节点(控制处理)上评估了计算开销和估计的FST精度。CPSS处理无CPU节流的LWIR图像耗时12毫秒,使用LWIR (FSTi)和基于热rgb (FST_Actual)图像处理算法估计的$\boldsymbol{(\mathrm{R}^{2}=0.98}$, p值= 0.1607)FST之间无显著差异。
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Reliable image processing algorithm for sunburn management in green apples
To tackle weather uncertainties and associated heat stress to apple fruits, researchers have been exploring development of a real-time crop stress monitoring systems. Our group have been researching one such in-field sensing system that uses localized weather and thermal-RGB imagery proceed on the edge for monitoring fruit surface temperature (FST). Such solutions can be tied with mitigation techniques (e.g., water-based cooling methods) as precision management. However, current edge compute algorithms are limited to segment thermal-RGB imagery for the red pigmented fruits near maturity and lack the green fruit segmentation, limiting the usability of the in-field sensing system. Aim of this study was to develop and validate a color independent fruit segmentation algorithm for successful FST monitoring. Longwave infrared (LWIR) imagery at daily peak air temperature was utilized to achieve temperature gradient aided fruit segmentation and to estimate FST for next 24-h. The algorithm robustness was field evaluated in Fog-Net (combination of fogging and netting) cooling and control treatments (Year 2021). Overall, algorithm accurately detected fruits in early growing season when fruits are green and effectively captured the treatment effects based on FST data. Additionally, the algorithm was also evaluated for computational overhead and estimated FST accuracy on an in-field sensing node (Control treatment) deployed in commercial apple orchard (Year 2022). CPSS took 12 milliseconds to process LWIR image with no CPU throttles and there was no significant difference between $\boldsymbol{(\mathrm{R}^{2}=0.98}$, p-value = 0.1607) FST estimated using LWIR (FSTi) and thermal-RGB based (FST_Actual) image processing algorithm.
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