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Landscape classification with deep neural networks
- Publication Year :
- 2018
- Publisher :
- California Digital Library (CDL), 2018.
-
Abstract
- The application of deep learning, specifically deep convolutional neural networks (DCNNs), to the classification of remotely sensed imagery of natural landscapes has the potential to greatly assist in the analysis and interpretation of geomorphic processes. However, the general usefulness of deep learning applied to conventional photographic imagery at a landscape scale is, at yet, largely unproven. If DCNN-based image classification is to gain wider application and acceptance within the geoscience community, demonstrable successes need to be coupled with accessible tools to retrain deep neural networks to discriminate landforms and land uses in landscape imagery. Here, we present an efficient approach to train/apply DCNNs with/on sets of photographic images, using a powerful graphical method, called a conditional random field (CRF), to generate DCNN training and testing data using minimal manual supervision. We apply the method to several sets of images of natural landscapes, acquired from satellites, aircraft, unmanned aerial vehicles, and fixed camera installations. We synthesize our findings to examine the general effectiveness of transfer learning to landscape scale image classification. Finally, we show how DCNN predictions on small regions of images might be used in conjunction with a CRF for highly accurate pixel-level classification of images.
- Subjects :
- bepress|Physical Sciences and Mathematics
Statistics and Probability
Computer and Systems Architecture
EarthArXiv|Engineering|Computer Engineering|Computer and Systems Architecture
bepress|Engineering
EarthArXiv|Physical Sciences and Mathematics|Environmental Sciences
bepress|Physical Sciences and Mathematics|Earth Sciences|Geomorphology
EarthArXiv|Engineering
ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION
bepress|Physical Sciences and Mathematics|Earth Sciences
EarthArXiv|Physical Sciences and Mathematics|Earth Sciences
Engineering
EarthArXiv|Physical Sciences and Mathematics|Earth Sciences|Geomorphology
EarthArXiv|Physical Sciences and Mathematics|Statistics and Probability|Other Statistics and Probability
Physical Sciences and Mathematics
Other Statistics and Probability
bepress|Physical Sciences and Mathematics|Environmental Sciences
Computer Engineering
bepress|Engineering|Computer Engineering|Computer and Systems Architecture
EarthArXiv|Engineering|Computer Engineering
EarthArXiv|Physical Sciences and Mathematics|Earth Sciences|Geology
EarthArXiv|Physical Sciences and Mathematics|Environmental Sciences|Environmental Monitoring
bepress|Physical Sciences and Mathematics|Earth Sciences|Geology
Geology
Geomorphology
FOS: Earth and related environmental sciences
bepress|Physical Sciences and Mathematics|Environmental Sciences|Environmental Monitoring
EarthArXiv|Physical Sciences and Mathematics
EarthArXiv|Physical Sciences and Mathematics|Statistics and Probability
bepress|Physical Sciences and Mathematics|Statistics and Probability|Other Statistics and Probability
Earth Sciences
bepress|Physical Sciences and Mathematics|Statistics and Probability
bepress|Engineering|Computer Engineering
Environmental Sciences
Environmental Monitoring
Subjects
Details
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....28e620c1ad4ea45b8073ac60c5e3c1d4