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Meta-analysis of deep neural networks in remote sensing: A comparative study of mono-temporal classification to support vector machines
- Source :
- ISPRS Journal of Photogrammetry and Remote Sensing. 152:192-210
- Publication Year :
- 2019
- Publisher :
- Elsevier BV, 2019.
-
Abstract
- Deep learning methods have recently found widespread adoption for remote sensing tasks, particularly in image or pixel classification. Their flexibility and versatility has enabled researchers to propose many different designs to process remote sensing data in all spectral, spatial, and temporal dimensions. In most of the reported cases they surpass their non-deep rivals in overall classification accuracy. However, there is considerable diversity in implementation details in each case and a systematic quantitative comparison to non-deep classifiers does not exist. In this paper, we look at the major research papers that have studied deep learning image classifiers in recent years and undertake a meta-analysis on their performance compared to the most used non-deep rival, Support Vector Machine (SVM) classifiers. We focus on mono-temporal classification as the time-series image classification did not offer sufficient samples. Our work covered 103 manuscripts and included 92 cases that supported direct accuracy comparisons between deep learners and SVMs. Our general findings are the following: (i) Deep networks have better performance than non-deep spectral SVM implementations, with Convolutional Neural Networks (CNNs) performing better than other deep learners. This advantage, however, diminishes when feeding SVM with richer features extracted from data (e.g. spatial filters). (ii) Transfer learning and fine-tuning on pre-trained CNNs are offering promising results over spectral or enhanced SVM, however these pre-trained networks are currently limited to RGB input data, therefore currently lack applicability in multi/hyperspectral data. (iii) There is no strong relationship between network complexity and accuracy gains over SVM; small to medium networks perform similarly to more complex networks. (iv) Contrary to the popular belief, there are numerous cases of high deep networks performance with training proportions of 10% or less. Our study also indicates that the new generation of classifiers is often overperforming existing benchmark datasets, with accuracies surpassing 99%. There is a clear need for new benchmark dataset collections with diverse spectral, spatial and temporal resolutions and coverage that will enable us to study the design generalizations, challenge these new classifiers, and further advance remote sensing science. Our community could also benefit from a coordinated effort to create a large pre-trained network specifically designed for remote sensing images that users could later fine-tune and adjust to their study specifics.
- Subjects :
- Network complexity
010504 meteorology & atmospheric sciences
Contextual image classification
business.industry
Computer science
Deep learning
0211 other engineering and technologies
Hyperspectral imaging
02 engineering and technology
Complex network
01 natural sciences
Convolutional neural network
Atomic and Molecular Physics, and Optics
Computer Science Applications
Support vector machine
Deep belief network
Artificial intelligence
Computers in Earth Sciences
business
Engineering (miscellaneous)
021101 geological & geomatics engineering
0105 earth and related environmental sciences
Remote sensing
Subjects
Details
- ISSN :
- 09242716
- Volume :
- 152
- Database :
- OpenAIRE
- Journal :
- ISPRS Journal of Photogrammetry and Remote Sensing
- Accession number :
- edsair.doi...........4683436556ecf85ca651a5b85f73a2df
- Full Text :
- https://doi.org/10.1016/j.isprsjprs.2019.04.016