Event Classification by Physics-Informed Inpainting for Distributed Multichannel Acoustic Sensor with Partially Degraded Channels
Publication Date: 5/4/2026
Event: 2026 IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP 2026)
Reference: pp. 14857-14861, 2026
Authors: Noriyuki Tonami, NEC Corporation; Wataru Kohno, NEC Laboratories America, Inc.; Yoshiyuki Yajima, NEC Corporation; Saikiko Mishima, NEC Corporation; Yumi Arai, NEC Corporation; Reishi Kondo, NEC Corporation; Tomoyuki Hino, NEC Corporation
Abstract: Distributed multichannel acoustic sensing (DMAS) enables large-scale sound event classification (SEC), but performance drops when many channels are degraded and when sensor layouts at test time differ from training layouts. We propose a learning-free, physics-informed inpainting frontend based on reverse time migration (RTM). In this approach, observed multichannel spectrograms are first back-propagated on a 3D grid using an analytic Greens function to form a scene-consistent image, and then forward-projected to reconstruct inpainted signals before log mel feature extraction and transformer-based classification. We evaluate the method on ESC-50 with 50 sensors and three layouts (circular, linear, right-angle), where per-channel SNRs are sampled from ?30 to 0 dB. Compared with an AST baseline, scaling-sparsemax channel selection, and channel-swap augmentation, the proposed RTM frontend achieves the best or competitive accuracy across all layouts, improving accuracy by 13.1 points on the right-angle layout (from 9.7% to 22.8%). Correlation analyses show that spatial weights align more strongly with SNR than with channel source distance, and that higher SNR weight correlation corresponds to higher SEC accuracy. These results demonstrate that a reconstruct-then-project, physics-based preprocessing effectively complements learning-only methods for DMAS under layout-open configurations and severe channel degradation.
Publication Link: https://ieeexplore.ieee.org/document/11464108

