2019
DOI: 10.34133/2019/7368761
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An Exploration of Deep-Learning Based Phenotypic Analysis to Detect Spike Regions in Field Conditions for UK Bread Wheat

Abstract: Wheat is one of the major crops in the world, with a global demand expected to reach 850 million tons by 2050 that is clearly outpacing current supply. The continual pressure to sustain wheat yield due to the world’s growing population under fluctuating climate conditions requires breeders to increase yield and yield stability across environments. We are working to integrate deep learning into field-based phenotypic analysis to assist breeders in this endeavour. We have utilised wheat images collected … Show more

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Cited by 31 publications
(18 citation statements)
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“…8) indicated that the accuracy is poor in the earlier grain-filling stage. The results of Alkhudaydi et al [39] also suggested that this model performed well during the grain-filling stage. These results confirm that better-quality images can be obtained from the later grain-filling stage.…”
Section: Discussionmentioning
confidence: 82%
“…8) indicated that the accuracy is poor in the earlier grain-filling stage. The results of Alkhudaydi et al [39] also suggested that this model performed well during the grain-filling stage. These results confirm that better-quality images can be obtained from the later grain-filling stage.…”
Section: Discussionmentioning
confidence: 82%
“…To some degree, the essence of crop sciences is the knowledge of selection (by breeders) or regulation (by agronomists) of agronomical traits. Traditionally, crop scientists heavily depend on visual inspection of crops in the field as well as their evaluation of target traits based on their experience and expertise of the crop, which is labor intensive, time consuming, relatively subjective, and prone to errors [14,47]. In addition, the target traits are mainly morphological traits including leaf senescence, plant height, tillering capacity, panicle or spike size, and growth periods, while fewer physiological traits are monitored and analyzed.…”
Section: Significance Of Lpr For Crop Breeding and Managementmentioning
confidence: 99%
“…Continued development is occurring in this space as deep learning approaches continue to be implemented in the development of wheat phenotyping software [45]. For example, faster and easier acquisition of shoot traits that have been thus far excluded from image-based shoot phenotyping, such as spike number and tiller count, is steadily becoming possible using deep learning facilitated image analysis [46].…”
Section: Research Trajectories In Shoot Phenotypingmentioning
confidence: 99%