LifeCLEF Plant Identification Task 2015
- URL: http://arxiv.org/abs/2509.23891v1
- Date: Sun, 28 Sep 2025 13:53:35 GMT
- Title: LifeCLEF Plant Identification Task 2015
- Authors: Herve Goeau, Pierre Bonnet, Alexis Joly,
- Abstract summary: The LifeCLEF plant identification challenge aims at eval- uating plant identification methods and systems at a very large scale.<n>The 2015 evaluation was actually conducted on a set of more than 100K images illustrating 1000 plant species living in West Europe.
- Score: 2.961584451143903
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The LifeCLEF plant identification challenge aims at eval- uating plant identification methods and systems at a very large scale, close to the conditions of a real-world biodiversity monitoring scenario. The 2015 evaluation was actually conducted on a set of more than 100K images illustrating 1000 plant species living in West Europe. The main originality of this dataset is that it was built through a large-scale partic- ipatory sensing plateform initiated in 2011 and which now involves tens of thousands of contributors. This overview presents more precisely the resources and assessments of the challenge, summarizes the approaches and systems employed by the participating research groups, and provides an analysis of the main outcomes.
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