| Literature DB >> 33440797 |
Sarah Kentsch1,2, Mariano Cabezas3, Luca Tomhave2, Jens Groß2, Benjamin Burkhard2, Maximo Larry Lopez Caceres1, Katsushi Waki4, Yago Diez4.
Abstract
Invasive blueberry species endanger the sensitive environment of wetlands and protection laws call for management measures. Therefore, methods are needed to identify blueberry bushes, locate them, and characterise their distribution and properties with a minimum of disturbance. UAVs (Unmanned Aerial Vehicles) and image analysis have become important tools for classification and detection approaches. In this study, techniques, such as GIS (Geographical Information Systems) and deep learning, were combined in order to detect invasive blueberry species in wetland environments. Images that were collected by UAV were used to produce orthomosaics, which were analysed to produce maps of blueberry location, distribution, and spread in each study site, as well as bush height and area information. Deep learning networks were used with transfer learning and unfrozen weights in order to automatically detect blueberry bushes reaching True Positive Values (TPV) of 93.83% and an Overall Accuracy (OA) of 98.83%. A refinement of the result masks reached a Dice of 0.624. This study provides an efficient and effective methodology to study wetlands while using different techniques.Entities:
Keywords: ArcGIS; UAVs; big data; blueberries; deep learning; image analysis; orthomosaics; segmentation refinement
Year: 2021 PMID: 33440797 DOI: 10.3390/s21020471
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576