Multichannel Classification of Target Signals by Means of an SVM Ensemble in C-OTDR Systems for Remote Monitoring of Extended Objects
نویسندگان
چکیده
The report proposes a new method for multichannel classification of C-OTDR signals. The method is based on the use of an ensemble of SVM-classifiers and it is robust to the types of environments of seismoacoustic signals propagation. The report presents the results of practical application of the proposed method in systems for remote monitoring of extended (distributed) objects.
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