Philippe Rufin

@philrufin@mapstodon.space
257 Followers
424 Following
371 Posts
Geographer with special interest in #Earthobservation & #machinelearning applications in the context of food production, water resources, and sustainable land management.
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F.R.S. FNRS Postdoctoral Fellow
ELI UCLouvain | EOLab HU Berlin 🇪🇺
Websitehttps://philipperufin.github.io/
ORCIDhttps://orcid.org/0000-0001-8919-1058
GitHubhttps://github.com/philipperufin
The best results were obtained when complementing human labels and pseudo-labels. We show that our workflow facilitates domain adaptation in label-scarce settings. Pseudo labels can be efficiently generated at scale and thus are a stepping stone for overcoming the persisting data gaps in heterogeneous smallholder agriculture, such as in Sub-Saharan Africa. 4/n
We designed eight pseudo-label selection strategies and compared human annotated fields with the resulting pseudo-labels. We found high spatial agreement for several sets of pseudo-labels with size distributions, quantities, and seasonal distribution resembling human annotated labels. 2/n
Smallholder field delineation based on #earthobservation & #deeplearning is challenged by lack of available training data. We show that pseudo-labels support domain adaptation across geographies & sensor characteristics! Find our pre-print on arxiv: https://doi.org/10.48550/arXiv.2312.08384
#computervision #remotesensing #eochat 1/n
Taking it further: leveraging pseudo labels for field delineation across label-scarce smallholder regions

Transfer learning allows for resource-efficient geographic transfer of pre-trained field delineation models. However, the scarcity of labeled data for complex and dynamic smallholder landscapes, particularly in Sub-Saharan Africa, remains a major bottleneck for large-area field delineation. This study explores opportunities of using sparse field delineation pseudo labels for fine-tuning models across geographies and sensor characteristics. We build on a FracTAL ResUNet trained for crop field delineation in India (median field size of 0.24 ha) and use this pre-trained model to generate pseudo labels in Mozambique (median field size of 0.06 ha). We designed multiple pseudo label selection strategies and compared the quantities, area properties, seasonal distribution, and spatial agreement of the pseudo labels against human-annotated training labels (n = 1,512). We then used the human-annotated labels and the pseudo labels for model fine-tuning and compared predictions against human field annotations (n = 2,199). Our results indicate i) a good baseline performance of the pre-trained model in both field delineation and field size estimation, and ii) the added value of regional fine-tuning with performance improvements in nearly all experiments. Moreover, we found iii) substantial performance increases when using only pseudo labels (up to 77% of the IoU increases and 68% of the RMSE decreases obtained by human labels), and iv) additional performance increases when complementing human annotations with pseudo labels. Pseudo labels can be efficiently generated at scale and thus facilitate domain adaptation in label-scarce settings. The workflow presented here is a stepping stone for overcoming the persisting data gaps in heterogeneous smallholder agriculture of Sub-Saharan Africa, where labels are commonly scarce.

arXiv.org

First time looking at #CBERS4A WPM data!

Does anyone on #Mastodon have experience working with it? What are the best pre-processing (incl. #cloudmasking) algorithms? For all other #geospatial folks: can you guess which part of #Earth this image represents?

#EOchat #earthobservation

#EarthObservation mission impossible?

Need access to pan-sharpened SPOT 6/7 data across large regions in Sub-Saharan #Africa. Context is land systems / #sustainability #science, strictly non-profit, so budget is limited (surprise!). Any hint to hidden archives, institutional databases, research programs, funding lines, or else is valuable!

#EOchat #remotesensing #LadiesofLandsat #ESA

Hey, I´m new here, so time for a short #introduction:

I´m an #openscience advocate with roots in #geography, working with #earthobservation & other #geospatial data. Reading all things related to #python, #rstats, #QGIS & #machinelearning. Researching in #landsystem #science, #landuse in #agriculture, currently trying to find #fields in #smallholder landscapes.

Let´s connect & (re)build a strong community!