Nabwire Shona, Wakholi Collins, Faqeerzada Mohammad Akbar, Arief Muhammad Akbar Andi, Kim Moon S, Baek Insuck, Cho Byoung-Kwan
Department of Biosystems Machinery Engineering, Chungnam National University, Daejeon, South Korea.
Department of Smart Agriculture Systems, Chungnam National University, Daejeon, South Korea.
Front Plant Sci. 2022 Feb 18;13:847225. doi: 10.3389/fpls.2022.847225. eCollection 2022.
Watermelon () is a widely consumed, nutritious fruit, rich in water and sugars. In most crops, abiotic stresses caused by changes in temperature, moisture, etc., are a significant challenge during production. Due to the temperature sensitivity of watermelon plants, temperatures must be closely monitored and controlled when the crop is cultivated in controlled environments. Studies have found direct responses to these stresses include reductions in leaf size, number of leaves, and plant size. Stress diagnosis based on plant morphological features (e.g., shape, color, and texture) is important for phenomics studies. The purpose of this study is to classify watermelon plants exposed to low-temperature stress conditions from the normal ones using features extracted using image analysis. In addition, an attempt was made to develop a model for estimating the number of leaves and plant age (in weeks) using the extracted features. A model was developed that can classify normal and low-temperature stress watermelon plants with 100% accuracy. The R, RMSE, and mean absolute difference (MAD) of the predictive model for the number of leaves were 0.94, 0.87, and 0.88, respectively, and the R and RMSE of the model for estimating the plant age were 0.92 and 0.29 weeks, respectively. The models developed in this study can be utilized in high-throughput phenotyping systems for growth monitoring and analysis of phenotypic traits during watermelon cultivation.
西瓜()是一种广泛食用的营养水果,富含水分和糖分。在大多数作物中,由温度、湿度等变化引起的非生物胁迫是生产过程中的一项重大挑战。由于西瓜植株对温度敏感,在可控环境中种植该作物时,必须密切监测和控制温度。研究发现,对这些胁迫的直接反应包括叶片大小、叶片数量和植株大小的减少。基于植物形态特征(如形状、颜色和质地)的胁迫诊断对于表型组学研究很重要。本研究的目的是使用通过图像分析提取的特征,将遭受低温胁迫的西瓜植株与正常植株进行分类。此外,还尝试使用提取的特征建立一个估计叶片数量和植株年龄(以周为单位)的模型。开发了一个模型,该模型可以以100%的准确率对正常和低温胁迫的西瓜植株进行分类。叶片数量预测模型的R、RMSE和平均绝对差(MAD)分别为0.94、0.87和0.88,估计植株年龄模型的R和RMSE分别为0.92和0.29周。本研究中开发的模型可用于高通量表型分析系统,以监测西瓜种植过程中的生长情况并分析表型性状。