TY - JOUR
T1 - Footstep detection in urban seismic data with a convolutional neural network
AU - Jakkampudi, Srikanth
AU - Shen, Junzhu
AU - Li, Weichen
AU - Dev, Ayush
AU - Zhu, Tieyuan
AU - Martin, Eileen R.
N1 - Funding Information:
This work was supported by a seed grant from the Penn State Institutes of Energy and the Environment. We thank Todd Myers and Ken Miller at Pennsylvania State University and Thomas Coleman at Silixa who assisted in deploying the fiber-optic DAS array at the campus. We also want to thank collaborators Patrick Fox, Andy Nyblade, and Dave Stensrud who contributed to the FORESEE array experiment. The research on automated footstep detection was initiated as part of an undergraduate experiential learning course in the Virginia Tech Computational Modeling and Data Analytics Program. It continued with financial support from the Hamlett Undergraduate Research Program. Eileen Martin was supported in part by the U.S. Department of Energy grant DE-FE0091786. We would also like to thank the Virginia Tech Advanced Research Computing facility for providing computing resources.
Publisher Copyright:
© 2020 Society of Exploration Geophysicists. All rights reserved.
PY - 2020/9/1
Y1 - 2020/9/1
N2 - Seismic data for studying the near surface have historically been extremely sparse in cities, limiting our ability to understand small-scale processes, locate small-scale geohazards, and develop earthquake hazard microzonation at the scale of buildings. In recent years, distributed acoustic sensing (DAS) technology has enabled the use of existing underground telecommunications fibers as dense seismic arrays, requiring little manual labor or energy to maintain. At the Fiber-Optic foR Environmental SEnsEing array under Pennsylvania State University, we detected weak slow-moving signals in pedestrian-only areas of campus. These signals were clear in the 1 to 5 Hz range. We verified that they were caused by footsteps. As part of a broader scheme to remove and obscure these footsteps in the data, we developed a convolutional neural network to detect them automatically. We created a data set of more than 4000 windows of data labeled with or without footsteps for this development process. We describe improvements to the data input and architecture, leading to approximately 84% accuracy on the test data. Performance of the network was better for individual walkers and worse when there were multiple walkers. We believe the privacy concerns of individual walkers are likely to be highest priority. Community buy-in will be required for these technologies to be deployed at a larger scale. Hence, we should continue to proactively develop the tools to ensure city residents are comfortable with all geophysical data that may be acquired.
AB - Seismic data for studying the near surface have historically been extremely sparse in cities, limiting our ability to understand small-scale processes, locate small-scale geohazards, and develop earthquake hazard microzonation at the scale of buildings. In recent years, distributed acoustic sensing (DAS) technology has enabled the use of existing underground telecommunications fibers as dense seismic arrays, requiring little manual labor or energy to maintain. At the Fiber-Optic foR Environmental SEnsEing array under Pennsylvania State University, we detected weak slow-moving signals in pedestrian-only areas of campus. These signals were clear in the 1 to 5 Hz range. We verified that they were caused by footsteps. As part of a broader scheme to remove and obscure these footsteps in the data, we developed a convolutional neural network to detect them automatically. We created a data set of more than 4000 windows of data labeled with or without footsteps for this development process. We describe improvements to the data input and architecture, leading to approximately 84% accuracy on the test data. Performance of the network was better for individual walkers and worse when there were multiple walkers. We believe the privacy concerns of individual walkers are likely to be highest priority. Community buy-in will be required for these technologies to be deployed at a larger scale. Hence, we should continue to proactively develop the tools to ensure city residents are comfortable with all geophysical data that may be acquired.
UR - http://www.scopus.com/inward/record.url?scp=85095805699&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85095805699&partnerID=8YFLogxK
U2 - 10.1190/tle39090654.1
DO - 10.1190/tle39090654.1
M3 - Article
AN - SCOPUS:85095805699
SN - 1070-485X
VL - 39
SP - 654
EP - 660
JO - Leading Edge
JF - Leading Edge
IS - 9
ER -