Harbour Porpoise Click Train Classification with LSTM Recurrent Neural Networks

Detta är en Master-uppsats från KTH/Teknisk informationsvetenskap

Författare: Filip Ärlemalm; [2017]

Nyckelord: ;

Sammanfattning: The harbour porpoise is a toothed whale whose presence is threatened in Scandinavia. Onestep towards preserving the species in critical areas is to study and observe the harbourporpoise population growth or decline in these areas. Today this is done by using underwateraudio recorders, so called hydrophones, and manual analyzing tools. This report describes amethod that modernizes the process of harbour porpoise detection with machine learning. Thedetection method is based on data collected by the hydrophone AQUAclick 100. The data isprocessed and classified automatically with a stacked long short-term memory recurrent neuralnetwork designed specifically for this purpose.

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