Litcius/Paper detail

Low-Resource Music Genre Classification with Cross-Modal Neural Model Reprogramming

Yun-Ning Hung, Chao-Han Huck Yang, Pin‐Yu Chen, Alexander Lerch

202320 citationsDOI

Abstract

Transfer learning (TL) approaches have shown promising results when handling tasks with limited training data. However, considerable memory and computational resources are often required for fine-tuning pre-trained neural networks with target domain data. In this work, we introduce a novel method for leveraging pre-trained speech models for low-resource music classification based on the concept of Neural Model Reprogramming (NMR). NMR aims at re-purposing a pre-trained model from a source domain to a target domain by modifying the input of a frozen pre-trained models for cross-modal adaptation. In addition to the known, input-independent, re-programming method, we propose an new reprogramming paradigm: Input-dependent NMR, to increase adaptability to complex input data such as musical audio. Experimental results suggest that a neural model pre-trained on large-scale datasets can successfully perform music genre classification by using this reprogramming method. The two proposed Input-dependent NMR TL methods outperform fine-tuning-based TL methods on a small genre classification dataset.

Topics & Concepts

Computer scienceArtificial intelligenceArtificial neural networkDomain (mathematical analysis)ModalMachine learningTransfer of learningDomain adaptationAdaptabilityScale (ratio)Adaptation (eye)Resource (disambiguation)Benchmark (surveying)Pattern recognition (psychology)Speech recognitionNatural language processingOpticsGeodesyChemistryQuantum mechanicsClassifier (UML)PhysicsEcologyMathematical analysisMathematicsComputer networkPolymer chemistryBiologyGeographyMusic and Audio ProcessingMusic Technology and Sound StudiesSpeech and Audio Processing