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Utilization of Machine Vision to Monitor the Dynamic Responses of Rice Leaf Morphology and Colour to Nitrogen, Phosphorus, and Potassium Deficiencies

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TLDR
According to the results, higher nutrient supply resulted in a faster leaf extension rate and a lower developing rate of chlorosis, and the influence of N deficiency on leaf growth was the greatest, followed by P deficiency and then K deficiency.
Abstract
Machine vision technology enables the continuous and nondestructive monitoring of leaf responses to different nutrient supplies and thereby contributes to the improvement of diagnostic effects. In this study, we analysed the temporal dynamics of rice leaf morphology and colour under different nitrogen (N), phosphorus (P), and potassium (K) treatments by continuous imaging and further evaluated the effectiveness of dynamic characteristics for identification. The top four leaves (the 1st incomplete leaf and the top three fully expanded leaves) were scanned every three days, and all images were processed in MATLAB to extract the morphological and colour characteristics for dynamic analysis. Subsequently, the mean impact value was applied to evaluate the effectiveness of dynamic indices for identification. According to the results, higher nutrient supply resulted in a faster leaf extension rate and a lower developing rate of chlorosis, and the influence of N deficiency on leaf growth was the greatest, followed by P deficiency and then K deficiency. Furthermore, the optimal indices for identification were mainly calculated from morphological characteristics of the 1st incomplete leaf and colour characteristics of the 3rd fully expanded leaf. Overall, dynamic analysis contributes not only to the exploration of the plant growth mechanism but also to the improvement of diagnostics.

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Computer vision technology in agricultural automation —A review

TL;DR: It is found that the existing technology can help the development of agricultural automation for small field farming to achieve the advantages of low cost, high efficiency and high precision, but there are still major challenges.
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Detection of nutrition deficiencies in plants using proximal images and machine learning: A review

TL;DR: A thorough literature search was carried out in order to identify as many relevant investigations on the subject as possible, and every kind of imaging sensor was considered, provided that images were captured at close range, thus excluding research using Unmanned Aerial Vehicles (UAVs), airplanes and satellites.
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Identification of plant leaf phosphorus content at different growth stages based on hyperspectral reflectance

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State of the art of urban smart vertical farming automation system: Advanced topologies, issues and recommendations

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References
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Journal ArticleDOI

Modeling Dynamics of Leaf Color Based on RGB Value in Rice

TL;DR: Wang et al. as mentioned in this paper developed a model for simulating the leaf color changes in rice (Oryza sativa L.) based on RGB (red, green, and blue) values.
Journal Article

Leaf characteristics extraction of rice under potassium stress based on static scan and spectral segmentation technique

TL;DR: Stable images for potassium-stressed leaf were acquired using stationary scanning, and object-oriented segmentation technique was adopted to produce image objects, and nearest neighbor classifier integrated the spectral, shape and topologic information of image objects to precisely identify characteristics of potassium-Stressed features.
Journal Article

Diagnosis of N nutrition of rice using digital image processing technique

TL;DR: In this paper, the spatial and temporal distribution of color indexes of canopy and the indexes of N nutrition in rice plants were studied to determine the best color parameters and regression equations for nitrogen with a digital camera, and provide a theoretical basis and technical approach for monitoring plant nitrogen status of rice and precision management of nitrogen fertilization.
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