Benchmarking and scaling of deep learning models for land cover image classification

被引:33
|
作者
Papoutsis, Ioannis [1 ]
Bountos, Nikolaos Ioannis [1 ,2 ]
Zavras, Angelos [1 ,2 ]
Michail, Dimitrios [2 ]
Tryfonopoulos, Christos [3 ]
机构
[1] Natl Observ Athens, Inst Astron Astrophys Space Applicat & Remote Sens, Athens, Greece
[2] Harokopio Univ Athens, Dept Informat & Telematics, Kallithea, Greece
[3] Univ Peloponnese, Dept Informat & Telecommun, Tripoli, Greece
基金
欧盟地平线“2020”;
关键词
Benchmark; Land use land cover image classification; BigEarthNet; Wide Residual Networks; EfficientNet; Deep learning; Model zoo; Transfer learning; ATTENTION; REPRESENTATIONS; NETWORK; SEGMENTATION; BIGEARTHNET; ADAPTATION; ARCHIVE; DATASET;
D O I
10.1016/j.isprsjprs.2022.11.012
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
The availability of the sheer volume of Copernicus Sentinel-2 imagery has created new opportunities for exploiting deep learning methods for land use land cover (LULC) image classification at large scales. However, an extensive set of benchmark experiments is currently lacking, i.e. deep learning models tested on the same dataset, with a common and consistent set of metrics, and in the same hardware. In this work, we use the BigEarthNet Sentinel-2 multispectral dataset to benchmark for the first time different state-of-the-art deep learning models for the multi-label, multi-class LULC image classification problem, contributing with an exhaustive zoo of 62 trained models. Our benchmark includes standard Convolution Neural Network architectures, as well as non-convolutional methods, such as Multi-Layer Perceptrons and Vision Transformers. We put to the test EfficientNets and Wide Residual Networks (WRN) architectures, and leverage classification accuracy, training time and inference rate. Furthermore, we propose to use the EfficientNet framework for the compound scaling of a lightweight WRN, by varying network depth, width, and input data resolution. Enhanced with an Efficient Channel Attention mechanism, our scaled lightweight model emerged as the new state-of-the-art. It achieves 4.5% higher averaged F-Score classification accuracy for all 19 LULC classes compared to a standard ResNet50 baseline model, with an order of magnitude less trainable parameters. We provide access to all trained models, along with our code for distributed training on multiple GPU nodes. This model zoo of pre-trained encoders can be used for transfer learning and rapid prototyping in different remote sensing tasks that use Sentinel-2 data, instead of exploiting backbone models trained with data from a different domain, e.g., from ImageNet. We validate their suitability for transfer learning in different datasets of diverse volumes. Our top-performing WRN achieves state-of-the-art performance (71.1% F-Score) on the SEN12MS dataset while being exposed to only a small fraction of the training dataset.
引用
收藏
页码:250 / 268
页数:19
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