Columbidae

Multi tool use
Columbidae
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Columba livia volans
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Classificatio biologica 
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Regnum:
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Animalia
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Phylum:
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Chordata
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Classis:
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Aves
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Superordo:
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Neoaves
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Ordo:
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Columbiformes Latham, 1790
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Familia:
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Columbidae Illiger, 1811
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Subfamiliae
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- Didunculinae
- Gourinae
- Otidiphabinae
- Ptilinopinae
- Treroninae
- Columbinae
Raphinae†
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Ubi Columbidae habitant
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Columbidae sunt familia avium Columbiformium, circiter 310 species comprehendens, quae sunt corpore pingui, collo brevi, rostro brevi tenuique. Plerumque semina, fructus, plantasque edunt. Per orbem terrarum habitant, sed maxima diversitas specierum in oecozonis Indomalayana et Australasiatica reperitur.
Taxinomia |
- Genus Columba
- Columba livia
- Columba vitiensis
- Genus Didunculus
- Genus Gallicolumba
- Genus Geopelia
- Genus Macropygia
- Macropygia emiliana
- Macropygia mackinlayi
- Macropygia nigrirostris
- Macropygia ruficeps
- Macropygia rufipennis
- Macropygia tenuirostris
- Macropygia unchall
- Genus Ptilinopus
- Genus Streptopelia
Nexus externi |

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Situs scientifici: • ITIS • NCBI • Biodiversity • Encyclopedia of Life • Marine Species • Fossilworks
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Vide Columbidas apud Vicispecies.
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Vicimedia Communia plura habent quae ad Columbidas spectant.
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Haec stipula ad avem spectat. Amplifica, si potes!
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