Nicolas Virlet
Rothamsted Research
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Nicolas Virlet.
Functional Plant Biology | 2017
Nicolas Virlet; Kasra Sabermanesh; Pouria Sadeghi-Tehran; Malcolm J. Hawkesford
Current approaches to field phenotyping are laborious or permit the use of only a few sensors at a time. In an effort to overcome this, a fully automated robotic field phenotyping platform with a dedicated sensor array that may be accurately positioned in three dimensions and mounted on fixed rails has been established, to facilitate continual and high-throughput monitoring of crop performance. Employed sensors comprise of high-resolution visible, chlorophyll fluorescence and thermal infrared cameras, two hyperspectral imagers and dual 3D laser scanners. The sensor array facilitates specific growth measurements and identification of key growth stages with dense temporal and spectral resolution. Together, this platform produces a detailed description of canopy development across the crops entire lifecycle, with a high-degree of accuracy and reproducibility.
Frontiers in Plant Science | 2017
Pouria Sadeghi-Tehran; Kasra Sabermanesh; Nicolas Virlet; Malcolm J. Hawkesford
Recording growth stage information is an important aspect of precision agriculture, crop breeding and phenotyping. In practice, crop growth stage is still primarily monitored by-eye, which is not only laborious and time-consuming, but also subjective and error-prone. The application of computer vision on digital images offers a high-throughput and non-invasive alternative to manual observations and its use in agriculture and high-throughput phenotyping is increasing. This paper presents an automated method to detect wheat heading and flowering stages, which uses the application of computer vision on digital images. The bag-of-visual-word technique is used to identify the growth stage during heading and flowering within digital images. Scale invariant feature transformation feature extraction technique is used for lower level feature extraction; subsequently, local linear constraint coding and spatial pyramid matching are developed in the mid-level representation stage. At the end, support vector machine classification is used to train and test the data samples. The method outperformed existing algorithms, having yielded 95.24, 97.79, 99.59% at early, medium and late stages of heading, respectively and 85.45% accuracy for flowering detection. The results also illustrate that the proposed method is robust enough to handle complex environmental changes (illumination, occlusion). Although the proposed method is applied only on identifying growth stage in wheat, there is potential for application to other crops and categorization concepts, such as disease classification.
Journal of Experimental Botany | 2015
Nicolas Virlet; Evelyne Costes; Sébastien Martinez; Jean-Jacques Kelner; Jean-Luc Regnard
Highlight This research successfully used image-based spectral indices acquired in the field to assess variability of response to drought in a tree mapping population and to detect the related genetic determinisms.
Plant Methods | 2017
Pouria Sadeghi-Tehran; Nicolas Virlet; Kasra Sabermanesh; Malcolm J. Hawkesford
BackgroundAccurately segmenting vegetation from the background within digital images is both a fundamental and a challenging task in phenotyping. The performance of traditional methods is satisfactory in homogeneous environments, however, performance decreases when applied to images acquired in dynamic field environments.ResultsIn this paper, a multi-feature learning method is proposed to quantify vegetation growth in outdoor field conditions. The introduced technique is compared with the state-of the-art and other learning methods on digital images. All methods are compared and evaluated with different environmental conditions and the following criteria: (1) comparison with ground-truth images, (2) variation along a day with changes in ambient illumination, (3) comparison with manual measurements and (4) an estimation of performance along the full life cycle of a wheat canopy.ConclusionThe method described is capable of coping with the environmental challenges faced in field conditions, with high levels of adaptiveness and without the need for adjusting a threshold for each digital image. The proposed method is also an ideal candidate to process a time series of phenotypic information throughout the crop growth acquired in the field. Moreover, the introduced method has an advantage that it is not limited to growth measurements only but can be applied on other applications such as identifying weeds, diseases, stress, etc.
Precision Agriculture | 2016
David Gómez-Candón; Nicolas Virlet; Sylvain Labbé; Audrey Jolivot; Jean-Luc Regnard
2. International Conference on Robotics and associated High-technologies and Equipment for Agriculture and Forestry RHEA | 2014
David Gómez-Candón; Sylvain Labbé; Nicolas Virlet; Audrey Jolivot; Jean-Luc Regnard
Archive | 2012
Nicolas Virlet; Evelyne Costes; Sébastien Martinez; Valentine Lebourgeois; Sylvain Labbé; Jean-Luc Regnard
XXIX International Horticultural Congress (IHC2014) | 2016
Nicolas Virlet; David Gómez-Candón; Valentine Lebourgeois; Sébastien Martinez; Audrey Jolivot; Pierre-Eric Lauri; Evelyne Costes; Sylvain Labbé; Jean-Luc Regnard
Perspectives agricoles | 2015
Malcolm J. Hawkesford; Nicolas Virlet; Benoit Moureaux
Plant Biology Europe FESPB/EPSO Congress 2014 | 2014
David Gómez-Candón; Nicolas Virlet; Evelyne Costes; Audrey Jolivot; Sébastien Martinez; Sylvain Labbé; Jean-Luc Regnard