Szurley, Joseph
Mitigating Closed-model Adversarial Examples with Bayesian Neural Modeling for Enhanced End-to-End Speech Recognition
Yang, Chao-Han Huck, Ahmed, Zeeshan, Gu, Yile, Szurley, Joseph, Ren, Roger, Liu, Linda, Stolcke, Andreas, Bulyko, Ivan
In this work, we aim to enhance the system robustness of end-to-end automatic speech recognition (ASR) against adversarially-noisy speech examples. We focus on a rigorous and empirical "closed-model adversarial robustness" setting (e.g., on-device or cloud applications). The adversarial noise is only generated by closed-model optimization (e.g., evolutionary and zeroth-order estimation) without accessing gradient information of a targeted ASR model directly. We propose an advanced Bayesian neural network (BNN) based adversarial detector, which could model latent distributions against adaptive adversarial perturbation with divergence measurement. We further simulate deployment scenarios of RNN Transducer, Conformer, and wav2vec-2.0 based ASR systems with the proposed adversarial detection system. Leveraging the proposed BNN based detection system, we improve detection rate by +2.77 to +5.42% (relative +3.03 to +6.26%) and reduce the word error rate by 5.02 to 7.47% on LibriSpeech datasets compared to the current model enhancement methods against the adversarial speech examples.
Towards Knowledge Oriented Intelligent Audio Analytics
Oltramari, Alessandro (Bosch Research and Technology Center, Pittsburgh (CR/RTC3.1-NA)) | Szurley, Joseph (Bosch Research and Technology Center, Pittsburgh (CR/RTC3.1-NA)) | Das, Samarjit (Bosch Research and Technology Center, Pittsburgh (CR/RTC3.1-NA)) | Francis, Jonathan (Bosch Research and Technology Center, Pittsburgh (CR/RTC3.1-NA), Carnegie Mellon University) | Li, Juncheng (Bosch Research and Technology Center, Pittsburgh (CR/RTC3.1-NA), Carnegie Mellon University)
In this position paper we discuss the benefits of combining knowledge technologies and deep learning (DL) for audio analytics: knowledge can enable high-level reasoning, helping to scale up intelligent systems from sound recognition to event analysis. We will also argue that a knowledge-integrated DL framework is key to enable smart environments.