Towards spike-based machine intelligence with neuromorphic computing K Roy, A Jaiswal, P Panda Nature 575 (7784), 607-617, 2019 | 1373 | 2019 |
Enabling spike-based backpropagation for training deep neural network architectures C Lee, SS Sarwar, P Panda, G Srinivasan, K Roy Frontiers in neuroscience 14, 497482, 2020 | 400 | 2020 |
2022 roadmap on neuromorphic computing and engineering DV Christensen, R Dittmann, B Linares-Barranco, A Sebastian, ... Neuromorphic Computing and Engineering 2 (2), 022501, 2022 | 369 | 2022 |
Enabling deep spiking neural networks with hybrid conversion and spike timing dependent backpropagation N Rathi, G Srinivasan, P Panda, K Roy arXiv preprint arXiv:2005.01807, 2020 | 309 | 2020 |
Tree-CNN: A hierarchical deep convolutional neural network for incremental learning D Roy, P Panda, K Roy Neural Networks 121, 148-160, 2019 | 276 | 2019 |
Training deep spiking convolutional neural networks with STDP-based unsupervised pre-training followed by supervised fine-tuning C Lee, P Panda, G Srinivasan, K Roy Frontiers in neuroscience 12, 435, 2018 | 216 | 2018 |
Conditional Deep Learning for Energy-Efficient and Enhanced Pattern Recognition P Panda, A Sengupta, K Roy 2016 Design, Automation & Test in Europe Conference & Exhibition (DATE), pp …, 2015 | 204 | 2015 |
Magnetic tunnel junction mimics stochastic cortical spiking neurons A Sengupta, P Panda, P Wijesinghe, Y Kim, K Roy Scientific reports 6 (1), 30039, 2016 | 203 | 2016 |
Domain adaptation without source data Y Kim, D Cho, K Han, P Panda, S Hong IEEE Transactions on Artificial Intelligence 2 (6), 508-518, 2021 | 189* | 2021 |
Deep spiking convolutional neural network trained with unsupervised spike-timing-dependent plasticity C Lee, G Srinivasan, P Panda, K Roy IEEE Transactions on Cognitive and Developmental Systems 11 (3), 384-394, 2018 | 151 | 2018 |
Revisiting batch normalization for training low-latency deep spiking neural networks from scratch Y Kim, P Panda Frontiers in neuroscience 15, 773954, 2021 | 148 | 2021 |
Gabor filter assisted energy efficient fast learning convolutional neural networks SS Sarwar, P Panda, K Roy 2017 IEEE/ACM International Symposium on Low Power Electronics and Design …, 2017 | 133 | 2017 |
Unsupervised Regenerative Learning of Hierarchical Features in Spiking Deep Networks for Object Recognition P Panda, K Roy 2016 International Joint Conference on Neural Networks (IJCNN), pp. 299-306, 2016 | 133 | 2016 |
STDP-based pruning of connections and weight quantization in spiking neural networks for energy-efficient recognition N Rathi, P Panda, K Roy IEEE Transactions on Computer-Aided Design of Integrated Circuits and …, 2018 | 126 | 2018 |
Resparc: A reconfigurable and energy-efficient architecture with memristive crossbars for deep spiking neural networks A Ankit, A Sengupta, P Panda, K Roy Proceedings of the 54th Annual Design Automation Conference 2017, 1-6, 2017 | 117 | 2017 |
Toward scalable, efficient, and accurate deep spiking neural networks with backward residual connections, stochastic softmax, and hybridization P Panda, SA Aketi, K Roy Frontiers in Neuroscience 14, 653, 2020 | 113 | 2020 |
Habituation based synaptic plasticity and organismic learning in a quantum perovskite F Zuo, P Panda, M Kotiuga, J Li, M Kang, C Mazzoli, H Zhou, A Barbour, ... Nature communications 8 (1), 240, 2017 | 108 | 2017 |
Neural architecture search for spiking neural networks Y Kim, Y Li, H Park, Y Venkatesha, P Panda ECCV 2022, 2022 | 91 | 2022 |
Optimizing deeper spiking neural networks for dynamic vision sensing Y Kim, P Panda Neural Networks 144, 686-698, 2021 | 86 | 2021 |
Inherent adversarial robustness of deep spiking neural networks: Effects of discrete input encoding and non-linear activations S Sharmin, N Rathi, P Panda, K Roy Computer Vision–ECCV 2020: 16th European Conference, Glasgow, UK, August 23 …, 2020 | 86 | 2020 |