Litcius/Paper detail

Learning Deep Models from Synthetic Data for Extracting Dolphin Whistle Contours

Pu Li, Xiaobai Liu, Kaitlin Palmer, Erica Fleishman, Douglas Gillespie, Eva‐Marie Nosal, Yu Shiu, Holger Klinck, Danielle Cholewiak, Tyler A. Helble, Marie A. Roch

202023 citationsDOIOpen Access PDF

Abstract

We present a learning-based method for extracting whistles of toothed whales (Odontoceti) in hydrophone recordings. Our method represents audio signals as time-frequency spectrograms and decomposes each spectrogram into a set of time-frequency patches. A deep neural network learns archetypical patterns (e.g., crossings, frequency modulated sweeps) from the spectrogram patches and predicts time-frequency peaks that are associated with whistles. We also developed a comprehensive method to synthesize training samples from background environments and train the network with minimal human annotation effort. We applied the proposed learn-from-synthesis method to a subset of the public Detection, Classification, Localization, and Density Estimation (DCLDE) 2011 workshop data to extract whistle confidence maps, which we then processed with an existing contour extractor to produce whistle annotations. The F1-score of our best synthesis method was 0.158 greater than our baseline whistle extraction algorithm (~25% improvement) when applied to common dolphin (Delphinus spp.) and bottlenose dolphin (Tursiops truncatus) whistles.

Topics & Concepts

SpectrogramBottlenose dolphinComputer scienceArtificial intelligencePattern recognition (psychology)Set (abstract data type)Artificial neural networkRight whaleData setExtractorSpeech recognitionFeature extractionCetaceaHydrophoneDeep learningAnnotationSynthetic dataAcousticsEngineeringWhaleBiologyProcess engineeringFisheryEcologyPhysicsProgramming languageMarine animal studies overviewUnderwater Acoustics ResearchMaritime and Coastal Archaeology