IEEE Transactions on Mobile Computing, volume 22, issue 6, pages 3270-3286
DeepVehicleSense: An Energy-efficient Transportation Mode Recognition Leveraging Staged Deep Learning over Sound Samples
Sungyong Lee
1
,
Jinsung Lee
2
,
Kyunghan Lee
3
2
Qualcomm Technologies Inc., San Jose, CA, USA
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Publication type: Journal Article
Publication date: 2023-06-01
scimago Q1
SJR: 2.755
CiteScore: 12.9
Impact factor: 7.7
ISSN: 15361233, 15580660, 21619875
Electrical and Electronic Engineering
Computer Networks and Communications
Software
Abstract
In this paper, we present a new transportation mode recognition system for smartphones called DeepVehicleSense, which is widely applicable to mobile context-aware services. DeepVehicleSense aims at achieving three performance objectives: high accuracy, low latency, and low power consumption at once by exploiting sound characteristics captured from the built-in microphone while being on candidate transportations. To attain high energy efficiency, DeepVehicleSense adopts hierarchical accelerometer-based triggers that minimize the activation of the microphone of smartphones. Further, to achieve high accuracy and low latency, DeepVehicleSense makes use of non-linear filters that can best extract the transportation sound samples. For recognition of five different transportation modes, we design a deep learning based sound classifier using a novel deep neural network architecture with multiple branches. Our staged inference technique can significantly reduce runtime and energy consumption while maintaining high accuracy for the majority of samples. Through 263-hour datasets collected by seven different Android phone models, we demonstrate that DeepVehicleSense achieves the recognition accuracy of 97.44\% with only sound samples of 2 seconds at the power consumption of 35.08 mW on average for all-day monitoring.
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