Cascaded Region-based Densely Connected Network for Event Detection: A Seismic Application
Yue Wu, Youzuo Lin, Zheng Zhou, David Chas Bolton, Ji Liu, and Paul Johnson

TL;DR
This paper introduces a novel deep learning approach using a cascaded region-based densely connected network for seismic event detection, effectively handling variable event durations and correlated proposals, with high accuracy demonstrated on laboratory seismic data.
Contribution
The paper presents a new cascaded region-based densely connected neural network tailored for seismic event detection, addressing challenges of variable event durations and proposal correlation.
Findings
High detection accuracy on seismic data
Effective handling of variable event durations
Robustness to noisy and partially annotated data
Abstract
Automatic event detection from time series signals has wide applications, such as abnormal event detection in video surveillance and event detection in geophysical data. Traditional detection methods detect events primarily by the use of similarity and correlation in data. Those methods can be inefficient and yield low accuracy. In recent years, because of the significantly increased computational power, machine learning techniques have revolutionized many science and engineering domains. In this study, we apply a deep-learning-based method to the detection of events from time series seismic signals. However, a direct adaptation of the similar ideas from 2D object detection to our problem faces two challenges. The first challenge is that the duration of earthquake event varies significantly; The other is that the proposals generated are temporally correlated. To address these…
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