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Posts by Image and Signal Processing • ISP

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Why AI needs a new philosophy of science?

Read the new paper at The Innovation:

lnkd.in/edYmdDuE

and with a short layman's story in Spanish here:

lnkd.in/ej97iVRP

#AI #ethics #trustworthiness #science #causality #reasoning

@elliot-eu.bsky.social
@erc.europa.eu

1 month ago 1 0 1 0
A Flag Decomposition for Hierarchical Datasets
A Flag Decomposition for Hierarchical Datasets Read the full article here: https://tr.ee/FlagDecompositionFlag manifolds encode hierarchical nested sequences of subspaces and serve as powerful structures ...

❔ How can we represent hierarchies inside data?

🗞️ Read "A Flag Decomposition for Hierarchical Datasets" to find out! 

🔗 https://tr.ee/FlagDecomposition

💻 https://github.com/nmank/FD

#DataScience #MachineLearning

1 month ago 2 0 0 0
Invertible Neural Networks for Probabilistic Aerosol Optical Depth Retrieval
Invertible Neural Networks for Probabilistic Aerosol Optical Depth Retrieval Read the full paper here: https://tr.ee/InvertibleNeuralNetworksSatellite remote sensing is the primary source of global aerosol observations, providing esse...

❔How do we estimate aerosol levels when a single satellite signal can match multiple physical scenarios?

🗞️"Invertible Neural Networks for Probabilistic Aerosol Optical Depth Retrieval"!

🔗https://tr.ee/InvertibleNeuralNetworks

#EarthObservation

1 month ago 1 0 0 0
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Want to play with the idea?? greenwave.earth

1 month ago 2 1 0 0
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Accelerated north–east shift of the global green wave trajectory | PNAS Viewed from space, a “green wave” seasonally traverses Earth’s surface, from the north in boreal summer to the south in austral summer. This wave r...

Very happy to finally share a paper that has been in my mind for a long time 🌍 🔗 www.pnas.org/doi/10.1073/...

1 month ago 25 9 1 2

Big news from the IPL, University of Valencia!🚨Two new MSCA projects joining the lab!
📈 Dr. Katerina Giamalaki (STOCKCLIM): Bridging climate extremes and financial risk with integrated AI.
🛰️ Dr. Dimitri Gominski (GEODE): Bringing transparency and explainability to satellite-based object detection.

1 month ago 1 0 0 0
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GitHub - kipoju/udl4fl Contribute to kipoju/udl4fl development by creating an account on GitHub.

💻 Access the Code & models at

2 months ago 1 0 0 0
Can flood detection models really work everywhere? #floods #RemoteSensing #machinelearning
Can flood detection models really work everywhere? #floods #RemoteSensing #machinelearning "Understanding flood detection models across Sentinel-1 and Sentinel-2 modalities and benchmark datasets"Read the full article here: https://tr.ee/Understand...

❔Can flood detection models really work everywhere?

Find out in "Understanding flood detection models across Sentinel-1 and Sentinel-2 modalities and benchmark datasets"!

🔗https://tr.ee/UnderstandingFloodDetectionModels

#Floods #RemoteSensing

2 months ago 1 0 1 0
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The CIMR L2PAD Workshop - Sentinel Success Stories - Sentinel Online

Our colleagues Roberto Fernández Moran, Moritz Link, Andrés Terrer, and Maria Piles recently joined the ESA CIMR L2PAD workshop to refine the algorithms behind the Copernicus Imaging Microwave Radiometer.

🔗Details: ir.uv.es/j0oIUJr

#CIMR #ESA #Climate #RemoteSensing #Science

2 months ago 2 0 0 0

📢 Call for Papers: PGM 2026

Join us in Valencia this September for an incredible program:

• ✨ Two world-class keynote speakers.
• 🎓 Pre-conference workshop for young researchers.
• 🤝 Great networking with the Probabilistic Graphical Models community.

🔗 More details: uv.es/pgm2026/cfp.html

2 months ago 0 0 0 0
Advances in Artificial Intelligence, Remote Sensing and Signal Processing for Urban and Earth Applications – ICANN 2026

📢 Call for papers: AI4Earth

Join us at ICANN 2026 (Padua, Italy) for our special session on ML & Signal Processing for Earth Systems 🌍

📄 Accepted papers published in Springer LNCS.
🗓️ Deadline: 16 March 2026

📌Details & topics: links.uv.es/ipluv/icann2...

#ICANN2026 #AI4Earth #ML

2 months ago 1 0 0 0
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Near-Real-Time Turbidity Monitoring at Global Scale Using Sentinel-2 Data and Machine Learning Techniques HighlightsWhat are the main findings?We have developed a machine-learning algorithm able to quantify high-turbid environments.We use open-source and free databases to train the model and open-source and free tools to develop it, which makes it easily replicable and transferable.What are the implications of the main findings?The social impact of our work implies improved monitoring of areas with high turbidity, which can lead to a better understanding and use of forecasting.Ocean color and water quality communities can take advantage of the lessons learned for developing new products or services.

❔What if water turbidity could be monitored globally every few days?

🗞️Read more in "Near-Real-Time Turbidity Monitoring at Global Scale Using Sentinel-2 Data and Machine Learning Techniques"!

🔗 https://tr.ee/Near-Real-TimeTurbidityMonitoring

#EarthObservation #MachineLearning

2 months ago 1 0 0 0
Do you want to dive deeper into #AI, #Earthobservation, statistics or color vision?
Do you want to dive deeper into #AI, #Earthobservation, statistics or color vision? Learn about dimensionality reduction, radiative transfer models, explainable AI, hyperspectral imaging, spatial information, and more.isp.uv.es/courses

🧑‍🏫👩‍🏫 Do you want to dive deeper into AI, Earth observation, statistics or color vision?

🔍 Learn about dimensionality reduction, radiative transfer models, explainable AI, hyperspectral imaging, spatial information, and more.

🔗 https://isp.uv.es/courses

2 months ago 3 1 0 0
Sub-Seasonal Forest Carbon Dynamics Lose Persistence Under Extremes
Sub-Seasonal Forest Carbon Dynamics Lose Persistence Under Extremes Read the full paper here: http://tr.ee/Sub-SeasonalForestCarbonDynamicsExtreme weather events pose a growing threat to the stability of terrestrial ecosystem...

❔ How do extreme weather events disrupt the stability of forest carbon fluxes?

🗞️ Learn about it in "Sub-Seasonal Forest Carbon Dynamics Lose Persistence Under Extremes"!

🔗 http://tr.ee/Sub-SeasonalForestCarbonDynamics

#ExtremeWeather #ClimateChange

2 months ago 1 0 0 0
Can we make machine learning models more resilient to distribution shifts? #machinelearning
Can we make machine learning models more resilient to distribution shifts? #machinelearning "Out-of-distribution robustness for multivariate analysis via causal regularisation"Read the full article here: http://tr.ee/Out-of-DistributionRobustness

❔ Can we make machine learning models more resilient to distribution shifts?

🗞️ Find out in "Out-of-distribution robustness for multivariate analysis via causal regularisation"!

🔗 http://tr.ee/Out-of-DistributionRobustness

#ML #CausalInference

2 months ago 3 0 0 0

You can still take part!

⌛ Just 5 minutes of your time is all it takes! ⬇️

🎨 Database based on board games for testing vision models: huesandcues-d76ee.web.app

3 months ago 0 0 0 0
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Considerable yet contrasting regional imprint of circulation change on summer temperature trends across the Northern hemisphere mid-latitudes Abstract. Rising summer temperatures and more frequent heat extremes are well-documented outcomes of anthropogenic climate change. However, the extent to which atmospheric circulation changes contribu...

Summer temperatures have strongly been influenced by circulation changes in the northern mid-latitudes.

In our new study we evaluate and compare 4 statistical and ML methods that decompose trends into a "thermodynamical" and a "circulation induced" part.
wcd.copernicus.org/articles/7/8...

3 months ago 12 4 1 1
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Generative networks for spatio-temporal gap filling of Sentinel-2 reflectances
Generative networks for spatio-temporal gap filling of Sentinel-2 reflectances Read the full article here: https://tr.ee/GapFillingSentinel2Earth observation from satellite sensors offers the possibility to monitor natural ecosystems by...

❔ How can AI help us fill the gaps in satellite imagery?

🗞️ More about it in "Generative networks for spatio-temporal gap filling of Sentinel-2 reflectances"!

🔗 https://tr.ee/GapFillingSentinel2

#EarthObservation #RemoteSensing #Sentinel2

3 months ago 1 0 0 0
Machine Learning for Climate Science session at EGU26

Machine Learning for Climate Science session at EGU26

Submit your abstract to our #EGU26 session: Machine Learning for Climate Science

Details: www.egu26.eu/session/57569

With @blankabalogh.bsky.social, Tom Beucler, Gustau Camps-Valls and @dwatsonparris.bsky.social

#ML #climateAI #ML4climate #ESM

@isp-uv-es.bsky.social @unibremen.bsky.social

3 months ago 4 3 0 1
ISP - 2025 Recap (II)
ISP - 2025 Recap (II) Here's a short recap of what has happened at the ISP during the second half of this year!#research #machinelearning #sentinel2 #earthobservation #geoscience ...

✨ A dynamic second half of the year has come to an end!

👏 Our team has been busy attending conferences, workshops and presentations. We have also welcomed new researchers and celebrated our colleagues' PhD thesis defenses.

⏩ Thanks to everyone who engaged with us!

3 months ago 2 0 0 0
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🤝 Take part and help us!

🎨 Our team is developing a database based on board games for testing vision models. It only takes five minutes to complete it and works best on a PC.

🔗 Instructions and link: https://huesandcues-d76ee.web.app

3 months ago 0 0 0 0
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👏 Congratulations to Gustau Camps-Valls on receiving the Blaise Pascal Medal in Earth and Environmental Sciences at the #EurASc 2025 Symposium!

🏅 This award recognises his pioneering contributions to integrating AI into Earth and climate sciences.

🔗 https://www.eurasc.eu/2025-award-recipients/

3 months ago 2 0 0 0
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⬇️ Kai-Hendrik Cohrs sharing his most recent work:

📗SHRUG-FM: Reliability-Aware Foundation Models for Earth Observation
🔗https://tr.ee/SHRUG-FM

📙Leveraging a Fully Differentiable Integrated Assessment Model for RL and Inference
🔗https://tr.ee/LeveragingDifferentiableIntegratedModel

 #EurIPS #ELLIS

4 months ago 2 0 0 0
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⏪ Last week, the ISP attended the six-day @euripsconf.bsky.social conference in Copenhagen!

📷 Jordi Cerdà ("Causal Effects of Price Spikes on Food Insecurity") and Gustau Camps ("Causality in Earth Science") during their presentations.

 #EurIPS #ELLIS

4 months ago 4 0 1 0
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Near-Real-Time Turbidity Monitoring at Global Scale Using Sentinel-2 Data and Machine Learning Techniques HighlightsWhat are the main findings?We have developed a machine-learning algorithm able to quantify high-turbid environments.We use open-source and free databases to train the model and open-source and free tools to develop it, which makes it easily replicable and transferable.What are the implications of the main findings?The social impact of our work implies improved monitoring of areas with high turbidity, which can lead to a better understanding and use of forecasting.Ocean color and water quality communities can take advantage of the lessons learned for developing new products or services.

🚀 This study offers strong generalisation across ecosystems, provides interpretable machine-learning insights aligned with optical physics.

🔗 Read it here:

5 months ago 2 0 0 0
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ℹ️ The authors present a novel, global-scale turbidity estimation model built on Sentinel-2 data and machine learning, trained using two harmonised open datasets (GLORIA and MAGEST), covering lakes, rivers, estuaries, and coastal oceans across 17 countries and turbidity levels from 0 to 2200 FNU.

5 months ago 1 0 1 0

🌍 MSI enables more detailed, operationally relevant monitoring, yet existing algorithms still lack generalisation and fail in extreme turbidity scenarios.

5 months ago 0 0 1 0

🛰️ This article delves into how satellite technologies have transformed turbidity monitoring, particularly through the capabilities of Sentinel-2’s MultiSpectral Instrument (MSI).

5 months ago 0 0 1 0
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🌊 Turbidity is a critical indicator of aquatic ecosystem health and water resource sustainability. It reflects a wide mix of natural processes and human activities, and its elevation can impair photosynthesis, disrupt oxygen distribution, and trigger harmful algal blooms.

5 months ago 0 0 1 0
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Near-Real-Time Turbidity Monitoring at Global Scale Using Sentinel-2 Data and Machine Learning Techniques HighlightsWhat are the main findings?We have developed a machine-learning algorithm able to quantify high-turbid environments.We use open-source and free databases to train the model and open-source and free tools to develop it, which makes it easily replicable and transferable.What are the implications of the main findings?The social impact of our work implies improved monitoring of areas with high turbidity, which can lead to a better understanding and use of forecasting.Ocean color and water quality communities can take advantage of the lessons learned for developing new products or services.

🗞️ 🆕 New paper published which explores the environmental and scientific context behind turbidity monitoring: "Near-Real-Time Turbidity Monitoring at Global Scale Using Sentinel-2 Data and Machine Learning Techniques".

#RemoteSensing #EarthObservation

5 months ago 3 0 1 0