Litcius/Paper detail

A Gaussian Mixture Model to Separate Birds and Insects in Single-Polarization Weather Radar Data

Raphaël Nussbaumer, Baptiste Schmid, Silke Bauer, Félix Liechti

2021Remote Sensing16 citationsDOIOpen Access PDF

Abstract

Recent and archived data from weather radar networks are extensively used for the quantification of continent-wide bird migration patterns. While the process of discriminating birds from weather signals is well established, insect contamination is still a problem. We present a simple method combining two Doppler radar products within a Gaussian mixture model to estimate the proportions of birds and insects within a single measurement volume, as well as the density and speed of birds and insects. This method can be applied to any existing archives of vertical bird profiles, such as the European Network for the Radar surveillance of Animal Movement repository, with no need to recalculate the huge amount of original polar volume data, which often are not available.

Topics & Concepts

RadarWeather radarRemote sensingEnvironmental scienceComputer scienceMeteorologyBird migrationGeographyEcologyTelecommunicationsBiologyAvian ecology and behaviorRangeland and Wildlife ManagementRemote Sensing and LiDAR Applications