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Tutorials, code and materials for the 2018 LifeWatch user meeting

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LifeWatch user meeting january 2018

In this repository you can find all material (demo and tutorials) presented by INBO-LifeWatch team during the demo session on Jan 26th 2018.

We presented:

  • "Trick the recognition bot" (demo)
  • wateRinfo (tutorial)
  • RGBIF (tutorial)

Demo

The demo Trick the recognition bot is a playful way to test the recognition bot for human detections used in cameratrap image processing (CATREIN).

Find out more about the recognition bot

Tutorials

As more and more open data becomes available, it is crucial to provide methods for scientists to efficiently access these data. The R language is a popular programming language for researchers working in the field of ecology. Hence, we contribute to and create R packages that enable data access. Two tutorials were presented to introduce two of these packages: rgbif (contirbution) and wateRinfo (lifewatch develeopment).

The rgbif package gives you access to data from GBIF, were we contribute our biodiversity data. The tutorial illustrates how you can use the package to search and download data from GBIF and how to create and interactive map of the downloaded data.

The wateRinfo package package provides data access to the waterinfo.be data, the data portal provided by the Flemish environmental agency (VMM). Different meteorological, flow and fysico-chemical variables are provided for set of stations.

Find out more about the tutorials.

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