cris.boxmetadata.label.title
Deep convolutional neural networks for weed detection in agricultural crops using optical aerial images
cris.boxmetadata.label.dateissued
04 browse.startsWith.months.november 2020
cris.boxmetadata.label.accesslevel
open access
cris.boxmetadata.label.resourcetype
conference paper
cris.boxmetadata.label.authors
Pontifícia Universidade Católica do Rio de Janeiro
cris.boxmetadata.label.publisher
International Society for Photogrammetry and Remote Sensing
cris.boxmetadata.label.abstract
The presence of weeds in agricultural crops has been one of the problems of greatest interest in recent years as they consume natural resources and negatively affect the agricultural process. For this purpose, a model has been implemented to segment weed in aerial images. The proposed model relies on DeepLabv3 architecture trained upon patches extracted from high-resolution aerial imagery. The dataset employed consisted in 5 high-resolution images that describes a sugar beet agricultural field in Germany. SegNet and U-Net architectures were selected for comparison purposes. Our results demonstrate that balancing of data, together with a greater spatial context leads better results with DeepLabv3 achieving up to 0.89 and 0.81 in terms of AUC and F1-score, respectively.
cris.boxmetadata.label.citationstartpage
551
cris.boxmetadata.label.citationendpage
555
cris.boxmetadata.label.volume
42
cris.boxmetadata.label.issue
3/W12
cris.boxmetadata.label.language
English
cris.boxmetadata.label.ocdeknowledgeArea
Ciencias de la computación
Agricultura
cris.boxmetadata.label.subjects
cris.boxmetadata.label.doi
cris.boxmetadata.label.scopusidentifier
2-s2.0-85097336920
cris.boxmetadata.label.partofresource
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives
cris.boxmetadata.label.containerissn
16821750
cris.boxmetadata.label.conference
2020 IEEE Latin American GRSS and ISPRS Remote Sensing Conference, LAGIRS 2020
cris.boxmetadata.label.sponsor
The authors would like to acknowledge Intel Semiconductors Brasil for recognizing ICA Lab at PUC-Rio University as Intel AI Innovation Center and for supplying a Sky Lake, 96 Intel(R) Xeon(R) Platinum 8169 processors.
peru-layout.shadow-copies
Directorio de Producción Científica
Scopus