Modelling Animal Biodiversity Using Acoustic Monitoring and Deep Learning
C. Chalmers, P.Fergus, S. Wich, S. N. Longmore

TL;DR
This paper presents a deep learning approach using acoustic data and feature extraction to automatically classify bird species, aiding biodiversity monitoring and conservation efforts.
Contribution
It introduces a novel application of mel-frequency cepstrum features and multilayer perceptron models for automatic bird species classification from acoustic data.
Findings
Achieved 0.74 sensitivity in bird species detection
Achieved 0.92 specificity in classification
Attained 0.74 overall accuracy
Abstract
For centuries researchers have used sound to monitor and study wildlife. Traditionally, conservationists have identified species by ear; however, it is now common to deploy audio recording technology to monitor animal and ecosystem sounds. Animals use sound for communication, mating, navigation and territorial defence. Animal sounds provide valuable information and help conservationists to quantify biodiversity. Acoustic monitoring has grown in popularity due to the availability of diverse sensor types which include camera traps, portable acoustic sensors, passive acoustic sensors, and even smartphones. Passive acoustic sensors are easy to deploy and can be left running for long durations to provide insights on habitat and the sounds made by animals and illegal activity. While this technology brings enormous benefits, the amount of data that is generated makes processing a…
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Taxonomy
TopicsAnimal Vocal Communication and Behavior · Music and Audio Processing · Speech and Audio Processing
