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The Bel Canto performance is a complex and multidimensional art form encompassing pitch, timbre, technique, and affective expression. To accurately reflect a performer's singing proficiency, it is essential to quantify and evaluate their vocal technical execution precisely. Convolutional Neural Networks (CNNs), renowned for their robust ability to capture spatial hierarchical information, have been widely adopted in various tasks, including audio pattern recognition. However, existing CNNs exhibit limitations in extracting intricate spectral features, particularly in Bel Canto performance. To address the challenges posed by complex spectral features and meet the demands for objective vocal technique assessment, we introduce Omni-Dimensional Dynamic Convolution (ODConv). Additionally, we employ densely connected layers to optimize the framework, enabling efficient utilization of multi-scale features across multiple dynamic convolution layers. To validate the effectiveness of our method, we conducted experiments on tasks including vocal technique assessment, music classification, acoustic scene classification, and sound event detection. The experimental results demonstrate that our Dense Dynamic Convolutional Network (DDNet) outperforms traditional CNN and Transformer models, achieving 90.11%, 73.95%, and 89.31% (Top-1 Accuracy), and 41.89% (mAP), respectively. Our research not only significantly improves the accuracy and efficiency of Bel Canto vocal technique assessment but also facilitates applications in vocal teaching and remote education.
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http://dx.doi.org/10.1038/s41598-025-98726-1 | DOI Listing |
J Voice
September 2025
School of Music, University of Minnesota, Minneapolis, MN 55455. Electronic address:
Introduction: Due to its tonal and syllabic structures, Chinese speakers may encounter unique difficulties when learning native Western operatic techniques. These challenges are particularly evident in balancing pitch control, subglottic pressure, and vowel production. The present study examines how native language influences vocal performance, using the Italian art song Caro mio ben as a test piece for singers from different language backgrounds.
View Article and Find Full Text PDFJ Voice
June 2025
Family Medicine and Osteopathic Manipulative Medicine, University of North Texas Health Science Center at Fort Worth, Fort Worth, Texas.
Objective: The purpose of this study is to examine the acoustic implications of using aspirated, well-coordinated, coup de la glotte, and hard glottal onset methods, in order to compare and contrast the radiated acoustic spectra. A numeric classification system is introduced to reduce terminological confusion.
Method: Singers trained in bel canto singing style were asked to sing 5-second samples on 3 predetermined pitches comprising the low, middle, and high range in male and female voices.
Sci Rep
May 2025
University of Shanghai for Science and Technology, Shanghai, 200093, China.
The Bel Canto performance is a complex and multidimensional art form encompassing pitch, timbre, technique, and affective expression. To accurately reflect a performer's singing proficiency, it is essential to quantify and evaluate their vocal technical execution precisely. Convolutional Neural Networks (CNNs), renowned for their robust ability to capture spatial hierarchical information, have been widely adopted in various tasks, including audio pattern recognition.
View Article and Find Full Text PDFJ Voice
February 2025
Department of Foreign Languages and Literatures, Tsinghua University, Beijing, China.
Background: With the advancement of vocal arts, Chinese National Singing and Western Classical Singing (Bel Canto) encounter challenges in cross-cultural adaptation. Investigating formant tuning strategies and the singer's formant is crucial for scientifically characterizing the vocal production techniques in Chinese singing styles.
Method: Eight singers-Chinese National Singing tenors, Chinese National Singing sopranos, Bel Canto tenors, and Bel Canto sopranos-were recruited.
J Voice
September 2024
College of Fine Arts, Boston University, Boston, Massachusetts.