Rain and wind are a major source of noise in acoustic recordings, especially in environments fully exposed to the elements such as moutain tops. However, up to now, rain and wind are not processed in a standard way in PAM. The recordings are either included but they may bias the analysis or removed altogether, potentially removing occurences of species of interest. We have developed a rain and wind detector that performs better than current state of the art detectors. This detector will be applied to all our recordings, enabling to monitor rain and wind presence and intensity. In the future, we would like to improve species detection in rain and wind.
We have also applied a new generative language model to our recordings, BioLingual. This state-of-the-art model was trained on bioacoustics recordings. We found that it works really well as a way to characterize mountain soundscapes. Specifically is allows to distinguish night vs. day as well as forest vs. open environments.