scispace - formally typeset
V

Vincent Bretagnolle

Researcher at University of La Rochelle

Publications -  360
Citations -  13561

Vincent Bretagnolle is an academic researcher from University of La Rochelle. The author has contributed to research in topics: Population & Agriculture. The author has an hindex of 53, co-authored 331 publications receiving 10837 citations. Previous affiliations of Vincent Bretagnolle include University of Puerto Rico & University of Aberdeen.

Papers
More filters
Journal ArticleDOI

Showcasing synergies between agriculture, biodiversity and ecosystem services to help farmers capitalising on native biodiversity (SHOWCASE)

TL;DR: In this paper , showcase will develop a multi-actor network of 10 Experimental Biodiversity Areas in contrasting European farming systems that will be used for in-situ research on biodiversity incentives and evidence for benefits as well as knowledge exchange.
Journal ArticleDOI

Seed depletion and landscape structure affect aggregative response in two wintering passerine birds

TL;DR: Results show that an uptake of seed-rich habitats in agricultural landscape would be very beneficial for wintering granivorous birds, by fulfilling the late winter ‘hungry gap’.
Journal Article

Réconcilier agriculture et environnement dans les paysages céréaliers

TL;DR: Les prairies sont au cœur des enjeux de conciliation entre l'agriculture and la gestion de la biodiversite as discussed by the authors.
Journal ArticleDOI

Notes on the Phoenix Petrel (Pterodroma alba) from Hatuta'a Island, Marquesas

TL;DR: The Phoenix Petrel (Pterodroma alba) is classified as Endangered and its population is declining on most of its breeding islands in the Marquesas Archipelago, French Polynesia as mentioned in this paper.
Journal ArticleDOI

Estimating inter-group interaction radius for point processes with nested spatial structures

TL;DR: A statistical procedure is proposed in order to estimate the interaction radius between points of a non-stationary point process when the process can present local aggregated and regular patterns, and is shown to be robust against non- stationarity.