PUBLICATION

idTracker: tracking individuals in a group by automatic identification of unmarked animals

Authors
Pérez-Escudero, A., Vicente-Page, J., Hinz, R.C., Arganda, S., de Polavieja, G.G.
ID
ZDB-PUB-140602-2
Date
2014
Source
Nature Methods   11(7): 743-8 (Journal)
Registered Authors
Keywords
none
MeSH Terms
  • Algorithms
  • Animals
  • Ants
  • Behavior, Animal*
  • Drosophila melanogaster
  • Female
  • Imaging, Three-Dimensional/methods
  • Locomotion/physiology*
  • Male
  • Mice
  • Oryzias
  • Social Behavior
  • Software
  • Video Recording/methods*
  • Zebrafish
PubMed
24880877 Full text @ Nat. Methods
Abstract
Animals in groups touch each other, move in paths that cross, and interact in complex ways. Current video tracking methods sometimes switch identities of unmarked individuals during these interactions. These errors propagate and result in random assignments after a few minutes unless manually corrected. We present idTracker, a multitracking algorithm that extracts a characteristic fingerprint from each animal in a video recording of a group. It then uses these fingerprints to identify every individual throughout the video. Tracking by identification prevents propagation of errors, and the correct identities can be maintained indefinitely. idTracker distinguishes animals even when humans cannot, such as for size-matched siblings, and reidentifies animals after they temporarily disappear from view or across different videos. It is robust, easy to use and general. We tested it on fish (Danio rerio and Oryzias latipes), flies (Drosophila melanogaster), ants (Messor structor) and mice (Mus musculus).
Genes / Markers
Figures
Expression
Phenotype
Mutations / Transgenics
Human Disease / Model
Sequence Targeting Reagents
Fish
Antibodies
Orthology
Engineered Foreign Genes
Mapping