Very deep convolutional neural networks for raw waveforms W Dai, C Dai, S Qu, J Li, S Das 2017 IEEE international conference on acoustics, speech and signal …, 2017 | 512 | 2017 |
A comparison of deep learning methods for environmental sound detection J Li, W Dai, F Metze, S Qu, S Das 2017 IEEE International conference on acoustics, speech and signal …, 2017 | 192 | 2017 |
Optimized adaptive scheduling of a manufacturing process system with multi-skill workforce and multiple machine types: An ontology-based, multi-agent reinforcement learning … S Qu, J Wang, S Govil, JO Leckie Procedia Cirp 57, 55-60, 2016 | 89 | 2016 |
Adversarial music: Real world audio adversary against wake-word detection system J Li, S Qu, X Li, J Szurley, JZ Kolter, F Metze Advances in Neural Information Processing Systems 32, 2019 | 86 | 2019 |
Online identification of inertia distribution in normal operating power system F Zeng, J Zhang, Y Zhou, S Qu IEEE Transactions on Power Systems 35 (4), 3301-3304, 2020 | 57 | 2020 |
A centralized reinforcement learning approach for proactive scheduling in manufacturing S Qu, T Chu, J Wang, J Leckie, W Jian 2015 IEEE 20th Conference on Emerging Technologies & Factory Automation …, 2015 | 45 | 2015 |
Large-scale traffic grid signal control with regional reinforcement learning T Chu, S Qu, J Wang 2016 american control conference (acc), 815-820, 2016 | 43 | 2016 |
Learning adaptive dispatching rules for a manufacturing process system by using reinforcement learning approach S Qu, J Wang, G Shivani 2016 IEEE 21st International Conference on Emerging Technologies and Factory …, 2016 | 39 | 2016 |
Let blind people see: real-time visual recognition with results converted to 3D audio R Jiang, Q Lin, S Qu no. January, 2016 | 34 | 2016 |
Comuptional reasoning and learning for smart manufacturing under realistic conditions S Qu, R Jian, T Chu, J Wang, T Tan 2014 International Conference on Behavioral, Economic, and Socio-Cultural …, 2014 | 23 | 2014 |
Understanding audio pattern using convolutional neural network from raw waveforms S Qu, J Li, W Dai, S Das arXiv preprint arXiv:1611.09524, 2016 | 21 | 2016 |
Large-scale multi-agent reinforcement learning using image-based state representation T Chu, S Qu, J Wang 2016 IEEE 55th Conference on Decision and Control (CDC), 7592-7597, 2016 | 17 | 2016 |
Dynamic scheduling in large-scale stochastic processing networks for demand-driven manufacturing using distributed reinforcement learning S Qu, J Wang, J Jasperneite 2018 IEEE 23rd International Conference on Emerging Technologies and Factory …, 2018 | 15 | 2018 |
Real-time decision support with reinforcement learning for dynamic flowshop scheduling J Wang, S Qu, J Wang, JO Leckie, R Xu Smart SysTech 2017; European Conference on Smart Objects, Systems and …, 2017 | 15 | 2017 |
Dynamic scheduling in modern processing systems using expert-guided distributed reinforcement learning S Qu, J Wang, J Jasperneite 2019 24th IEEE International Conference on Emerging Technologies and Factory …, 2019 | 13 | 2019 |
AudioTagging Done Right: 2nd comparison of deep learning methods for environmental sound classification JB Li, S Qu, PY Huang, F Metze arXiv preprint arXiv:2203.13448, 2022 | 12 | 2022 |
Sound event detection for real life audio DCASE challenge JL Dai Wei, P Pham, S Das, S Qu, F Metze Proc. Workshop Detection and Classification of Acoustic Scenes and Events, 2016 | 12 | 2016 |
Audio-visual event recognition through the lens of adversary JB Li, K Ma, S Qu, PY Huang, F Metze ICASSP 2021-2021 IEEE International Conference on Acoustics, Speech and …, 2021 | 10 | 2021 |
Acoustic scene recognition with deep neural networks (DCASE challenge 2016) W Dai, J Li, P Pham, S Das, S Qu Tech. Rep., DCASE2016 Challenge, 2016 | 9 | 2016 |
72‐3: Deep Learning Based Visual Defect Detection in Noisy and Imbalanced Data Q Cheng, S Qu, J Lee SID Symposium Digest of Technical Papers 53 (1), 971-974, 2022 | 8 | 2022 |