| dc.creator | Anagnostis A., Tagarakis A.C., Kateris D., Moysiadis V., Sørensen C.G., Pearson S., Bochtis D. | en |
| dc.date.accessioned | 2023-01-31T07:31:14Z | |
| dc.date.available | 2023-01-31T07:31:14Z | |
| dc.date.issued | 2021 | |
| dc.identifier | 10.3390/s21113813 | |
| dc.identifier.issn | 14248220 | |
| dc.identifier.uri | http://hdl.handle.net/11615/70503 | |
| dc.description.abstract | This study aimed to propose an approach for orchard trees segmentation using aerial images based on a deep learning convolutional neural network variant, namely the U-net network. The purpose was the automated detection and localization of the canopy of orchard trees under various conditions (i.e., different seasons, different tree ages, different levels of weed coverage). The implemented dataset was composed of images from three different walnut orchards. The achieved variability of the dataset resulted in obtaining images that fell under seven different use cases. The best-trained model achieved 91%, 90%, and 87% accuracy for training, validation, and testing, respectively. The trained model was also tested on never-before-seen orthomosaic images or orchards based on two methods (oversampling and undersampling) in order to tackle issues with out-of-the-field boundary transparent pixels from the image. Even though the training dataset did not contain orthomosaic images, it achieved performance levels that reached up to 99%, demonstrating the robustness of the proposed approach. © 2021 by the authors. Licensee MDPI, Basel, Switzerland. | en |
| dc.language.iso | en | en |
| dc.source | Sensors | en |
| dc.source.uri | https://www.scopus.com/inward/record.uri?eid=2-s2.0-85106685328&doi=10.3390%2fs21113813&partnerID=40&md5=15a02a7beda10bfbd2a4e5ac79cc8f96 | |
| dc.subject | Antennas | en |
| dc.subject | Convolutional neural networks | en |
| dc.subject | Deep neural networks | en |
| dc.subject | Forestry | en |
| dc.subject | Image segmentation | en |
| dc.subject | Orchards | en |
| dc.subject | Semantics | en |
| dc.subject | Aerial images | en |
| dc.subject | Automated detection | en |
| dc.subject | Field boundaries | en |
| dc.subject | Learning semantics | en |
| dc.subject | Over sampling | en |
| dc.subject | Performance level | en |
| dc.subject | Training dataset | en |
| dc.subject | Under-sampling | en |
| dc.subject | Deep learning | en |
| dc.subject | article | en |
| dc.subject | canopy | en |
| dc.subject | computer vision | en |
| dc.subject | convolutional neural network | en |
| dc.subject | deep learning | en |
| dc.subject | human | en |
| dc.subject | nonhuman | en |
| dc.subject | orchard | en |
| dc.subject | precision agriculture | en |
| dc.subject | season | en |
| dc.subject | walnut | en |
| dc.subject | MDPI AG | en |
| dc.title | Orchard mapping with deep learning semantic segmentation | en |
| dc.type | journalArticle | en |