MT-HCCAR: Multi-Task Deep Learning with Hierarchical Classification and Attention-based Regression for Cloud Property Retrieval (2401.16520v2)
Abstract: In the realm of Earth science, effective cloud property retrieval, encompassing cloud masking, cloud phase classification, and cloud optical thickness (COT) prediction, remains pivotal. Traditional methodologies necessitate distinct models for each sensor instrument due to their unique spectral characteristics. Recent strides in Earth Science research have embraced machine learning and deep learning techniques to extract features from satellite datasets' spectral observations. However, prevailing approaches lack novel architectures accounting for hierarchical relationships among retrieval tasks. Moreover, considering the spectral diversity among existing sensors, the development of models with robust generalization capabilities over different sensor datasets is imperative. Surprisingly, there is a dearth of methodologies addressing the selection of an optimal model for diverse datasets. In response, this paper introduces MT-HCCAR, an end-to-end deep learning model employing multi-task learning to simultaneously tackle cloud masking, cloud phase retrieval (classification tasks), and COT prediction (a regression task). The MT-HCCAR integrates a hierarchical classification network (HC) and a classification-assisted attention-based regression network (CAR), enhancing precision and robustness in cloud labeling and COT prediction. Additionally, a comprehensive model selection method rooted in K-fold cross-validation, one standard error rule, and two introduced performance scores is proposed to select the optimal model over three simulated satellite datasets OCI, VIIRS, and ABI. The experiments comparing MT-HCCAR with baseline methods, the ablation studies, and the model selection affirm the superiority and the generalization capabilities of MT-HCCAR.
- Clouds, radiation, and atmospheric circulation in the present-day climate and under climate change. Wiley Interdisciplinary Reviews: Climate Change, 12(2):e694, 2021.
- The esa climate change initiative: Satellite data records for essential climate variables”. Bulletin of the American Meteorological Society, 94(10):1541 – 1552, 2013.
- The plankton, aerosol, cloud, ocean ecosystem mission: Status, science, advances. Bulletin of the American Meteorological Society, 100(9):1775 – 1794, 2019.
- Ocean Color Instrument (OCI) Sensor. https://oceancolor.gsfc.nasa.gov/data/pace/characterization/.
- Moderate Resolution Imaging Spec- troradiometer (MODIS) Sensor. https://modis.gsfc.nasa.gov/.
- Visible Infrared Imaging Radiometer Suite (VIIRS) Sensor. https://ncc.nesdis.noaa.gov/VIIRS/VIIRSSpectralResponseFunctions.php.
- Advanced Baseline Imager (ABI) Sensor. https://ncc.nesdis.noaa.gov/GOESR/ABI.php.
- A machine learning-based cloud detection algorithm for the himawari-8 spectral image. Advances in Atmospheric Sciences, 39(12):1994–2007, 2022.
- A machine-learning-based cloud detection and thermodynamic-phase classification algorithm using passive spectral observations. Atmospheric Measurement Techniques, 13(5):2257–2277, 2020.
- Cloudscout: A deep neural network for on-board cloud detection on hyperspectral images. Remote Sensing, 12(14):2205, 2020.
- Dabnet: Deformable contextual and boundary-weighted network for cloud detection in remote sensing images. IEEE Transactions on Geoscience and Remote Sensing, 60:1–16, 2021.
- Machine learning-based retrieval of day and night cloud macrophysical parameters over east asia using himawari-8 data. Remote Sensing of Environment, 273:112971, 2022.
- Retrieval of cloud properties from thermal infrared radiometry using convolutional neural network. Remote Sensing of Environment, 278:113079, 2022.
- Deep domain adaptation based cloud type detection using active and passive satellite data. In 2020 IEEE International Conference on Big Data (Big Data), pages 1330–1337, 2020.
- Vdam: Vae based domain adaptation for cloud property retrieval from multi-satellite data. In Proceedings of the 30th International Conference on Advances in Geographic Information Systems. ACM SIGSPATIAL, 2022.
- GitHub Repository of Multi-Task Deep Learning with Hierarchical Classification and Attention-based Regression for Cloud Property Retrieval (MT-HCCAR ). https://github.com/AI-4-atmosphere-remote-sensing/MT-HCCAR.
- Cloud-net: An end-to-end cloud detection algorithm for landsat 8 imagery. In IGARSS 2019-2019 IEEE International Geoscience and Remote Sensing Symposium, pages 1029–1032. IEEE, 2019.
- Cloud detection in remote sensing images based on multiscale features-convolutional neural network. IEEE Transactions on Geoscience and Remote Sensing, 57(6):4062–4076, 2019.
- A cloud detection algorithm for satellite imagery based on deep learning. Remote sensing of environment, 229:247–259, 2019.
- Cloud detection algorithm for multi-modal satellite imagery using convolutional neural-networks (cnn). Remote Sensing of Environment, 237:111446, 2020.
- Cdnetv2: Cnn-based cloud detection for remote sensing imagery with cloud-snow coexistence. IEEE Transactions on Geoscience and Remote Sensing, 59(1):700–713, 2020.
- Benchmarking deep learning models for cloud detection in landsat-8 and sentinel-2 images. Remote Sensing, 13(5):992, 2021.
- A deep multitask semisupervised learning approach for chlorophyll-a retrieval from remote sensing images. Remote Sensing, 14(1):18, 2021.
- A multi-task driven and reconfigurable network for cloud detection in cloud-snow coexistence regions from very-high-resolution remote sensing images. International Journal of Applied Earth Observation and Geoinformation, 114:103070, 2022.
- A novel multi-task learning method with attention mechanism for wind turbine blades imbalance fault diagnosis. In 2022 4th Asia Energy and Electrical Engineering Symposium (AEEES), pages 857–862. IEEE, 2022.
- Deep multi-task learning for early warnings of dust events implemented for the middle east. Npj climate and atmospheric science, 6(1):23, 2023.
- Multi-task deep learning based spatiotemporal arctic sea ice forecasting. In 2021 IEEE International Conference on Big Data (Big Data), pages 1847–1857. IEEE, 2021.
- Multitask learning for human settlement extent regression and local climate zone classification. IEEE Geoscience and Remote Sensing Letters, 19:1–5, 2020.
- Physics-guided multitask learning for estimating power generation and co 2 emissions from satellite imagery. IEEE Transactions on Geoscience and Remote Sensing, 2023.
- Systematization of short-term forecasts of regional wave heights using a machine learning technique and long-term wave hindcast. Ocean Engineering, 264:112593, 2022.
- When self-supervised learning meets scene classification: Remote sensing scene classification based on a multitask learning framework. Remote Sensing, 12(20):3276, 2020.
- The tsis-1 hybrid solar reference spectrum. Geophysical research letters, 48(12):e2020GL091709, 2021.
- The chroma cloud-top pressure retrieval algorithm for the plankton, aerosol, cloud, ocean ecosystem (pace) satellite mission. Atmospheric Measurement Techniques, 16(4):969–996, 2023.
- The libradtran software package for radiative transfer calculations (version 2.0. 1). Geoscientific Model Development, 9(5):1647–1672, 2016.
- Effects of cloud horizontal inhomogeneity and drizzle on remote sensing of cloud droplet effective radius: Case studies based on large-eddy simulations. Journal of Geophysical Research: Atmospheres, 117(D19), 2012.
- Insights into 3d cloud radiative transfer for oco-2. Atmospheric Measurement Techniques Discussions, 2022:1–40, 2022.
- Multitask learning with low-level auxiliary tasks for encoder-decoder based speech recognition. arXiv preprint arXiv:1704.01631, 2017.
- Multi-task learning using multi-modal encoder-decoder networks with shared skip connections. In Proceedings of the IEEE International Conference on Computer Vision Workshops, pages 403–411, 2017.
- Hiclass: a python library for local hierarchical classification compatible with scikit-learn. Journal of Machine Learning Research, 24(29):1–17, 2023.
- Attention is all you need. Advances in neural information processing systems, 30, 2017.
- Non-local neural networks. In Proceedings of the IEEE conference on computer vision and pattern recognition, pages 7794–7803, 2018.
- New neural network cloud mask algorithm based on radiative transfer simulations. Remote Sensing of Environment, 219:62–71, 12 2018.
- Artificial intelligence a modern approach. London, 2010.
- An introduction to statistical learning, volume 112. Springer, 2013.
- NASA PACE Validation Plan, 2020. https://pace.oceansciences.org/docs/PACE_Validation_Plan_14July2020.pdf.
- Cloud detection with modis. part ii: validation. Journal of Atmospheric and Oceanic Technology, 25(7):1073–1086, 2008.
- Validation of modis cloud mask and multilayer flag using cloudsat-calipso cloud profiles and a cross-reference of their cloud classifications. Journal of Geophysical Research: Atmospheres, 121(19):11–620, 2016.
- A. Z. Kotarba. Calibration of global MODIS cloud amount using CALIOP cloud profiles. Atmospheric Measurement Techniques, 13(9):4995–5012, 2020.
- Global moderate resolution imaging spectroradiometer (modis) cloud detection and height evaluation using caliop. Journal of Geophysical Research: Atmospheres, 113(D8), 2008.
- The nasa modis-viirs continuity cloud optical properties products. Remote sensing, 13(1):2, 2020.
- Applied predictive modeling, volume 26. Springer, 2013.
- Leo Breiman. Classification and regression trees. Routledge, 1984.
- Regularization paths for generalized linear models via coordinate descent. Journal of statistical software, 33(1):1, 2010.
- Xingyan Li (3 papers)
- Andrew M. Sayer (1 paper)
- Ian T. Carroll (1 paper)
- Xin Huang (222 papers)
- Jianwu Wang (27 papers)