Beyond Correlation: A Path-Invariant Measure for Seismogram Similarity
Abstract
Similarity search is a popular technique for seismic signal processing, with template matching, matched filters, and subspace detectors being utilized for a wide variety of tasks, including both signal detection and source discrimination. Traditionally, these techniques rely on the cross-correlation function as the basis for measuring similarity. Unfortunately, seismogram correlation is dominated by path effects, essentially requiring a distinct waveform template along each path of interest. To address this limitation, we propose a novel measure of seismogram similarity that is explicitly invariant to path. Using Earthscope's USArray experiment, a path-rich dataset of 207,291 regional seismograms across 8452 unique events is constructed, and then employed via the batch-hard triplet loss function, to train a deep convolutional neural network that maps raw seismograms to a low-dimensional embedding space, where nearness on the space corresponds to nearness of source function, regardless of path or recording instrumentation. This path-agnostic embedding space forms a new representation for seismograms, characterized by robust, source-specific features, which we show to be useful for performing both pairwise event association as well as template-based source discrimination with a single template.
- Publication:
-
Seismological Research Letters
- Pub Date:
- January 2020
- DOI:
- Bibcode:
- 2020SeiRL..91..356D