EARTHQUAKE EVENT CLASSIFICATION METHOD USING ATTENTION-BASED CONVOLUTIONAL NEURAL NETWORK, RECORDING MEDIUM AND DEVICE FOR PERFORMING THE METHOD
An earthquake event classification method using an attention-based neural network includes: preprocessing input earthquake data by centering; extracting a feature map by nonlinearly converting the preprocessed earthquake data through a plurality of convolution layers having three or more layers; mea...
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creator | KU, Bon Hwa KO, Hanseok |
description | An earthquake event classification method using an attention-based neural network includes: preprocessing input earthquake data by centering; extracting a feature map by nonlinearly converting the preprocessed earthquake data through a plurality of convolution layers having three or more layers; measuring importance of a learned feature of the nonlinear-converted earthquake data based on an attention technique in which interdependence of channels of the feature map is modeled; correcting a feature value of the measured importance value through element-wise multiply with the learned feature map; performing down-sampling through max-pooling based on the feature value; and classifying an earthquake event by regularizing the down-sampled feature value. Accordingly, main core features inherent in many/complex data are extracted through attention-based deep learning to overcome the limitations of the existing micro earthquake detection technology, thereby enabling earthquake detection even in low SNR environments. |
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subjects | CALCULATING COMPUTING COUNTING HANDLING RECORD CARRIERS PHYSICS PRESENTATION OF DATA RECOGNITION OF DATA RECORD CARRIERS |
title | EARTHQUAKE EVENT CLASSIFICATION METHOD USING ATTENTION-BASED CONVOLUTIONAL NEURAL NETWORK, RECORDING MEDIUM AND DEVICE FOR PERFORMING THE METHOD |
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