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dc.contributor.authorPicon, Artzai
dc.contributor.authorSeitz, Maximiliam
dc.contributor.authorAlvarez-Gila, Aitor
dc.contributor.authorMohnke, Patrick
dc.contributor.authorOrtiz-Barredo, Amaia
dc.contributor.authorEchazarra, Jone
dc.date.accessioned2020-04-22T08:54:24Z
dc.date.available2020-04-22T08:54:24Z
dc.date.issued2019-12
dc.identifier.citationPicon, Artzai, Maximiliam Seitz, Aitor Alvarez-Gila, Patrick Mohnke, Amaia Ortiz-Barredo, and Jone Echazarra. “Crop Conditional Convolutional Neural Networks for Massive Multi-Crop Plant Disease Classification over Cell Phone Acquired Images Taken on Real Field Conditions.” Computers and Electronics in Agriculture 167 (December 2019): 105093. doi:10.1016/j.compag.2019.105093.en
dc.identifier.issn0168-1699en
dc.identifier.urihttp://hdl.handle.net/11556/904
dc.description.abstractConvolutional Neural Networks (CNN) have demonstrated their capabilities on the agronomical field, especially for plant visual symptoms assessment. As these models grow both in the number of training images and in the number of supported crops and diseases, there exist the dichotomy of (1) generating smaller models for specific crop or, (2) to generate a unique multi-crop model in a much more complex task (especially at early disease stages) but with the benefit of the entire multiple crop image dataset variability to enrich image feature description learning. In this work we first introduce a challenging dataset of more than one hundred-thousand images taken by cell phone in real field wild conditions. This dataset contains almost equally distributed disease stages of seventeen diseases and five crops (wheat, barley, corn, rice and rape-seed) where several diseases can be present on the same picture. When applying existing state of the art deep neural network methods to validate the two hypothesised approaches, we obtained a balanced accuracy (BAC=0.92) when generating the smaller crop specific models and a balanced accuracy (BAC=0.93) when generating a single multi-crop model. In this work, we propose three different CNN architectures that incorporate contextual non-image meta-data such as crop information onto an image based Convolutional Neural Network. This combines the advantages of simultaneously learning from the entire multi-crop dataset while reducing the complexity of the disease classification tasks. The crop-conditional plant disease classification network that incorporates the contextual information by concatenation at the embedding vector level obtains a balanced accuracy of 0.98 improving all previous methods and removing 71% of the miss-classifications of the former methods.en
dc.language.isoengen
dc.publisherElsevieren
dc.titleCrop conditional Convolutional Neural Networks for massive multi-crop plant disease classification over cell phone acquired images taken on real field conditionsen
dc.typearticleen
dc.identifier.doi10.1016/j.compag.2019.105093en
dc.rights.accessRightsembargoedAccessen
dc.subject.keywordsConvolutional neural networken
dc.subject.keywordsDeep learningen
dc.subject.keywordsContextual meta-dataen
dc.subject.keywordsContextual meta-data conditional neural networken
dc.subject.keywordsCrop protectionen
dc.subject.keywordsMulti-label classificationen
dc.subject.keywordsMulti-crop classificationen
dc.subject.keywordsImage processingen
dc.subject.keywordsPlant diseaseen
dc.subject.keywordsEarly pesten
dc.subject.keywordsDisease identificationen
dc.subject.keywordsPrecision agricultureen
dc.subject.keywordsPhyto-pathologyen
dc.journal.titleComputers and Electronics in Agricultureen
dc.page.initial105093en
dc.volume.number167en


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