Uilson Aires
@uvairesI am an Agricultural Engineer and remote sensing scientist specializing in geospatial modeling, machine learning, and satellite data analytics for agriculture.
Language Breakdown
Lines of code distribution across 7 owned repositories
I-Shaped Developer
I-shapedSpecialist — deep expertise in Jupyter Notebook
Collaboration Network
Global Impact visualization
Repos
17
PRs
0
Growth
+18%
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Coding Streak
Contribution activity over the past year
Suraj Yadav
@SAY70
Juliana Abreu Araujo
@araujojuliana
Dakota Hester
@DakotaHester
Ashwani
@Ashwani564
Erli Pinto dos Santos
@eupassarinho
Top Repositories
This repository implements an operational framework for reconstructing daily EVI image time series from Harmonized Landsat Sentinel-2 images using four gap-filling methods to retrieve crop phenological stages, using the asymmetric double sigmoid. The phenological stages were then used to estimate the sowing and emergence dates of corn and soybeans.
This repository is developed to process Harmonized Landsat Sentinel-2 (HLS) data, create training samples using gridded, random, clustered, and stratified sampling techniques, and employ an Artificial Neural Network for crop type mapping.
This repository uses You Look Only Once (YOLO) object detection model and high-resolution National Agriculture Imagery Program (NAIP) images to detect open cattle feedlot.
This repository implements four gap-filling methods to reconstruct geospatial data and predict synthetic images. The methods applied are Polynomial, Median, Harmonic, and LightGBM. Gap-filling is crucial for reconstructing data, as clouds, shadows, and other atmospheric conditions often affect the quality of the images.
This repository explores the use of ERA5-land dataset for assessing cattle welfare analysis. It process the data from Google Earth Engine (GEE) and calculates the Temperature Humidity Index (THI) to evaluate the impacts of the weather on cattle heat stress, and stable fly development.
How to extract a pixel value from an image based on the coordinate (lat/lon)
This repository presents an application of YOLO in remote sensing image.
Open Source Impact
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