Real-world Music Plagiarism Detection With Music Segment Transcription System
By: Seonghyeon Go
Potential Business Impact:
Finds copied music, even if it sounds different.
As a result of continuous advances in Music Information Retrieval (MIR) technology, generating and distributing music has become more diverse and accessible. In this context, interest in music intellectual property protection is increasing to safeguard individual music copyrights. In this work, we propose a system for detecting music plagiarism by combining various MIR technologies. We developed a music segment transcription system that extracts musically meaningful segments from audio recordings to detect plagiarism across different musical formats. With this system, we compute similarity scores based on multiple musical features that can be evaluated through comprehensive musical analysis. Our approach demonstrated promising results in music plagiarism detection experiments, and the proposed method can be applied to real-world music scenarios. We also collected a Similar Music Pair (SMP) dataset for musical similarity research using real-world cases. The dataset are publicly available.
Similar Papers
Segment Transformer: AI-Generated Music Detection via Music Structural Analysis
Sound
Tells if music was made by AI or people.
AI-Generated Music Detection and its Challenges
Sound
Finds fake music made by computers.
Sound and Music Biases in Deep Music Transcription Models: A Systematic Analysis
Sound
Helps computers understand music better, not just piano.