SDLGASFeb 25, 2019

Automatic Detection and Compression for Passive Acoustic Monitoring of the African Forest Elephant

arXiv:1902.09069v140 citations
Originality Incremental advance
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This work addresses the bottleneck of network bandwidth in conservation efforts for acoustically communicating species, offering a domain-specific solution for efficient monitoring.

The paper tackles the problem of real-time detection and compression of African Forest Elephant calls in passive acoustic monitoring by improving classification and segmentation with AI and introducing a novel end-to-end differentiable compression method, achieving dramatic improvements over naive coding strategies.

In this work, we consider applying machine learning to the analysis and compression of audio signals in the context of monitoring elephants in sub-Saharan Africa. Earth's biodiversity is increasingly under threat by sources of anthropogenic change (e.g. resource extraction, land use change, and climate change) and surveying animal populations is critical for developing conservation strategies. However, manually monitoring tropical forests or deep oceans is intractable. For species that communicate acoustically, researchers have argued for placing audio recorders in the habitats as a cost-effective and non-invasive method, a strategy known as passive acoustic monitoring (PAM). In collaboration with conservation efforts, we construct a large labeled dataset of passive acoustic recordings of the African Forest Elephant via crowdsourcing, compromising thousands of hours of recordings in the wild. Using state-of-the-art techniques in artificial intelligence we improve upon previously proposed methods for passive acoustic monitoring for classification and segmentation. In real-time detection of elephant calls, network bandwidth quickly becomes a bottleneck and efficient ways to compress the data are needed. Most audio compression schemes are aimed at human listeners and are unsuitable for low-frequency elephant calls. To remedy this, we provide a novel end-to-end differentiable method for compression of audio signals that can be adapted to acoustic monitoring of any species and dramatically improves over naive coding strategies.

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