2017
DOI: 10.3389/fpls.2017.01741
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X-FIDO: An Effective Application for Detecting Olive Quick Decline Syndrome with Deep Learning and Data Fusion

Abstract: We have developed a vision-based program to detect symptoms of Olive Quick Decline Syndrome (OQDS) on leaves of Olea europaea L. infected by Xylella fastidiosa, named X-FIDO (Xylella FastIdiosa Detector for O. europaea L.). Previous work predicted disease from leaf images with deep learning but required a vast amount of data which was obtained via crowd sourcing such as the PlantVillage project. This approach has limited applicability when samples need to be tested with traditional methods (i.e., PCR) to avoid… Show more

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Cited by 138 publications
(78 citation statements)
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“…Detecting symptoms of diseases is a large potential provided by deep learning. For example, CNNs already help detect plant diseases in olive trees 41 , cassavas (Manihot esculenta) 42 or various crops 43 .…”
Section: Population Monitoringmentioning
confidence: 99%
“…Detecting symptoms of diseases is a large potential provided by deep learning. For example, CNNs already help detect plant diseases in olive trees 41 , cassavas (Manihot esculenta) 42 or various crops 43 .…”
Section: Population Monitoringmentioning
confidence: 99%
“…Development of computer image analysis programs based on machine learning may facilitate symptom screening in the field (Cruz et al . ), although this approach still relies on inspecting individual plants. Aerial surveillance methods are also being developed to identify symptomatic plants across large areas (Zarco‐Tejada et al .…”
Section: Assessing Vector Abundance and Diversitymentioning
confidence: 99%
“…This modification of preprogrammed system parameters makes the devices "smart". The proposed system is an example of IoT in agriculture [32,33]. With the VC system, the user can easily access data from the WSN and control the SC system, remotely from his office/house (indoor application).…”
Section: Voice-controlled (Vc) Systemmentioning
confidence: 99%