Belangrijkste concepten
Complex-valued neural networks are utilized for room transfer function estimation, showing advantages in phase accuracy and sound field quality.
Samenvatting
The study focuses on reconstructing room transfer functions using complex-valued neural networks and irregularly distributed microphones. It compares the proposed technique with kernel-based approaches and data-driven methods, highlighting the benefits of complex-valued optimization. The paper outlines the network architecture, training procedure, and experimental validation on simulated and real data. Evaluation metrics include Normalized Mean Squared Error for both magnitude and complex fields.
Statistieken
"Recently, in addition to classical signal processing methods, deep learning techniques have been applied to reconstruct the room transfer function starting from a very limited set of measurements at scattered points in the room."
"To analyze the benefits of applying complex-valued optimization to the considered task, we compare the proposed technique with a state-of-the-art kernel-based signal processing approach for sound field reconstruction."
"The RTF from source s to microphone rw,h in a lightly damped shoebox room can be computed using an infinite summation of room modes."
Citaten
"This makes them well-suited to address various audio signal processing problems."
"The proposed technique exhibits relevant advantages in terms of phase accuracy and overall quality of the reconstructed sound field."