TL;DR
ORCA is a cloud-assisted environmental sound recognition system designed for batteryless LPWAN devices, significantly reducing energy consumption and latency while maintaining accuracy in resource-constrained, wide-area sensing applications.
Contribution
This work introduces ORCA, a novel system combining self-attention-based feature selection with cloud assistance to improve accuracy and efficiency on batteryless LPWAN devices.
Findings
Up to 80x energy savings compared to state-of-the-art methods
Up to 220x latency reduction while maintaining accuracy
Effective handling of wireless channel variability and unreliable offloading
Abstract
Learning-based environmental sound recognition has emerged as a crucial method for ultra-low-power environmental monitoring in biological research and city-scale sensing systems. These systems usually operate under limited resources and are often powered by harvested energy in remote areas. Recent efforts in on-device sound recognition suffer from low accuracy due to resource constraints, whereas cloud offloading strategies are hindered by high communication costs. In this work, we introduce ORCA, a novel resource-efficient cloud-assisted environmental sound recognition system on batteryless devices operating over the Low-Power Wide-Area Networks (LPWANs), targeting wide-area audio sensing applications. We propose a cloud assistance strategy that remedies the low accuracy of on-device inference while minimizing the communication costs for cloud offloading. By leveraging a…
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Taxonomy
MethodsFeature Selection
