Leaf Count Aided Novel Framework for Rice (Oryza sativa L.) Genotypes Discrimination in Phenomics: Leveraging Computer Vision and Deep Learning Applications

被引:3
|
作者
Vishal, Mukesh Kumar [1 ]
Saluja, Rohit [2 ,3 ]
Aggrawal, Devarshi [1 ]
Banerjee, Biplab [1 ]
Raju, Dhandapani [4 ]
Kumar, Sudhir [4 ]
Chinnusamy, Viswanathan [4 ]
Sahoo, Rabi Narayan [4 ]
Adinarayana, Jagarlapudi [1 ]
机构
[1] Indian Inst Technol, CSRE, Mumbai 400076, Maharashtra, India
[2] Indian Inst Technol, CSE, Mumbai 400076, Maharashtra, India
[3] Indian Inst Informat Technol, Hyderabad 500032, India
[4] Indian Agr Res Inst, Indian Council Agr Res, New Delhi 110012, India
来源
PLANTS-BASEL | 2022年 / 11卷 / 19期
关键词
number of leaves; biomass; deep learning; genome wide association study (GWAS); high throughput plant phenotyping (HTPP); leaf counting; rice (Oryza sativa L.); phenomics; PLANT ARCHITECTURE; NUMBER; STRESS; LEAVES; YIELD;
D O I
10.3390/plants11192663
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Drought is a detrimental factor to gaining higher yields in rice (Oryza sativa L.), especially amid the rising occurrence of drought across the globe. To combat this situation, it is essential to develop novel drought-resilient varieties. Therefore, screening of drought-adaptive genotypes is required with high precision and high throughput. In contemporary emerging science, high throughput plant phenotyping (HTPP) is a crucial technology that attempts to break the bottleneck of traditional phenotyping. In traditional phenotyping, screening significant genotypes is a tedious task and prone to human error while measuring various plant traits. In contrast, owing to the potential advantage of HTPP over traditional phenotyping, image-based traits, also known as i-traits, were used in our study to discriminate 110 genotypes grown for genome-wide association study experiments under controlled (well-watered), and drought-stress (limited water) conditions, under a phenomics experiment in a controlled environment with RGB images. Our proposed framework non-destructively estimated drought-adaptive plant traits from the images, such as the number of leaves, convex hull, plant-aspect ratio (plant spread), and similarly associated geometrical and morphological traits for analyzing and discriminating genotypes. The results showed that a single trait, the number of leaves, can also be used for discriminating genotypes. This critical drought-adaptive trait was associated with plant size, architecture, and biomass. In this work, the number of leaves and other characteristics were estimated non-destructively from top view images of the rice plant for each genotype. The estimation of the number of leaves for each rice plant was conducted with the deep learning model, YOLO (You Only Look Once). The leaves were counted by detecting corresponding visible leaf tips in the rice plant. The detection accuracy was 86-92% for dense to moderate spread large plants, and 98% for sparse spread small plants. With this framework, the susceptible genotypes (MTU1010, PUSA-1121 and similar genotypes) and drought-resistant genotypes (Heera, Anjali, Dular and similar genotypes) were grouped in the core set with a respective group of drought-susceptible and drought-tolerant genotypes based on the number of leaves, and the leaves' emergence during the peak drought-stress period. Moreover, it was found that the number of leaves was significantly associated with other pertinent morphological, physiological and geometrical traits. Other geometrical traits were measured from the RGB images with the help of computer vision.
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页数:25
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