AUTHOR=Haley Sofia M. , Madhusudhana Shyam , Branch Carrie L. TITLE=Comparing detection accuracy of mountain chickadee (Poecile gambeli) song by two deep-learning algorithms JOURNAL=Frontiers in Bird Science VOLUME=3 YEAR=2024 URL=https://www.frontiersin.org/journals/bird-science/articles/10.3389/fbirs.2024.1425463 DOI=10.3389/fbirs.2024.1425463 ISSN=2813-3870 ABSTRACT=
The use of autonomous recording units (ARUs) has become an increasingly popular and powerful method of data collection for biological monitoring in recent years. However, the large-scale recordings collected using these devices are often nearly impossible for human analysts to parse through, as they require copious amounts of time and resources. Automated recognition techniques have allowed for quick and efficient analysis of these recordings, and machine learning (ML) approaches, such as deep learning, have greatly improved recognition robustness and accuracy. We evaluated the performance of two deep-learning algorithms: 1. our own custom convolutional neural network (CNN) detector (specialist approach) and 2. BirdNET, a publicly available detector capable of identifying over 6,000 bird species (generalist approach). We used audio recordings of mountain chickadees (