2014 13th International Conference on Control Automation Robotics &Amp; Vision (ICARCV) 2014
DOI: 10.1109/icarcv.2014.7064309
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Study on spike detection of cereal plants

Abstract: The spike of a cereal plant is the grain-bearing organ whose physical properties are therefore critical components for plant yield. The ability to detect spikes from 2D images of cereals, such as wheat, provides vital information on tiller number and plants yield potential.We propose a novel spike detection method, which uses both RGB and fluorescence images. Firstly, an improved colour index method is used in the segmentation of plant feature from visible light RGB images, while threshold colour segmentation … Show more

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“…The non-dependency on ecological factors and highly efficient image processing techniques always outperformed the existing models based on agrarian factors ( Arya et al, 2022 ). Advanced neural network technologies like texture segmentation (patterns, photographs) in image partitioning ( Qiongyan et al, 2014 , 2017 ) and pixel segmentation on threshold values of plant objects ( Tan et al, 2020 ) performed better and obtained a relatively good score in spike detection, but the color feature-based segmentation methods may generate false detection in some growth stages, e.g., between green spike and green leaves in the early reproductive stage of the plants.…”
Section: Introductionmentioning
confidence: 99%
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“…The non-dependency on ecological factors and highly efficient image processing techniques always outperformed the existing models based on agrarian factors ( Arya et al, 2022 ). Advanced neural network technologies like texture segmentation (patterns, photographs) in image partitioning ( Qiongyan et al, 2014 , 2017 ) and pixel segmentation on threshold values of plant objects ( Tan et al, 2020 ) performed better and obtained a relatively good score in spike detection, but the color feature-based segmentation methods may generate false detection in some growth stages, e.g., between green spike and green leaves in the early reproductive stage of the plants.…”
Section: Introductionmentioning
confidence: 99%
“…In line with Qiongyan et al (2014Qiongyan et al ( , 2017 and Narisetti et al (2020), the other possible solution for yield estimation is the application of visual aids. Technology upgradation in the sensing process can cope with any field situation.…”
Section: Introductionmentioning
confidence: 99%