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[1] Ramesh Raskar,et al. Distributed learning of deep neural network over multiple agents , 2018, J. Netw. Comput. Appl..
[2] Branka Vucetic,et al. Managing Vertical Handovers in Millimeter Wave Heterogeneous Networks , 2019, IEEE Transactions on Communications.
[3] Masahiro Morikura,et al. Proactive Handover Based on Human Blockage Prediction Using RGB-D Cameras for mmWave Communications , 2016, IEICE Trans. Commun..
[4] Husheng Li,et al. Motion Aware Beam Tracking in Mobile Millimeter Wave Communications: A Data-Driven Approach , 2019, ICC 2019 - 2019 IEEE International Conference on Communications (ICC).
[5] Guigang Zhang,et al. Deep Learning , 2016, Int. J. Semantic Comput..
[6] Masahiro Morikura,et al. Reinforcement learning based predictive handover for pedestrian-aware mmWave networks , 2018, IEEE INFOCOM 2018 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS).
[7] Chun-hui Zhao,et al. Multi-Camera-Based Object Handoff Using Decision-Level Fusion , 2009, 2009 2nd International Congress on Image and Signal Processing.
[8] Thi-Lan Le,et al. Fusion of wifi and visual signals for person tracking , 2016, SoICT.
[9] Song Han,et al. Learning both Weights and Connections for Efficient Neural Network , 2015, NIPS.
[10] Ossi Kaltiokallio,et al. A Three-State Received Signal Strength Model for Device-Free Localization , 2014, IEEE Transactions on Vehicular Technology.
[11] Ramesh Raskar,et al. Split learning for health: Distributed deep learning without sharing raw patient data , 2018, ArXiv.
[12] Supun Samarasekera,et al. Multi-modal sensor fusion algorithm for ubiquitous infrastructure-free localization in vision-impaired environments , 2010, 2010 IEEE/RSJ International Conference on Intelligent Robots and Systems.
[13] Masahiro Morikura,et al. Handover Management for mmWave Networks With Proactive Performance Prediction Using Camera Images and Deep Reinforcement Learning , 2019, IEEE Transactions on Cognitive Communications and Networking.
[14] Mehdi Bennis,et al. Wireless Network Intelligence at the Edge , 2018, Proceedings of the IEEE.
[15] Xiongwen Zhao,et al. Millimeter-Wave Propagation Channel Characterization for Short-Range Wireless Communications , 2009, IEEE Transactions on Vehicular Technology.
[16] Masahiro Morikura,et al. Cooperative Sensing in Deep RL-Based Image-to-Decision Proactive Handover for mmWave Networks , 2020, 2020 IEEE 17th Annual Consumer Communications & Networking Conference (CCNC).
[17] Sofie Pollin,et al. Database-Assisted Spectrum Prediction in 5G Networks and Beyond: A Review and Future Challenges , 2019, IEEE Circuits and Systems Magazine.
[18] William J. Dally,et al. Deep Gradient Compression: Reducing the Communication Bandwidth for Distributed Training , 2017, ICLR.
[19] Peter Richtárik,et al. Federated Learning: Strategies for Improving Communication Efficiency , 2016, ArXiv.
[20] Mehdi Bennis,et al. Communication-Efficient On-Device Machine Learning: Federated Distillation and Augmentation under Non-IID Private Data , 2018, ArXiv.
[21] Kiyoharu Aizawa,et al. Tracking Persons using Particle Filter Fusing Visual and Wi-Fi Localizations for Widely Distributed Camera , 2007, 2007 IEEE International Conference on Image Processing.
[22] Ioannis Mitliagkas,et al. Manifold Mixup: Better Representations by Interpolating Hidden States , 2018, ICML.
[23] Guna Seetharaman,et al. Heterogeneous Multi-View Information Fusion: Review of 3-D Reconstruction Methods and a New Registration with Uncertainty Modeling , 2016, IEEE Access.
[24] Fei-Fei Li,et al. RGB-W: When Vision Meets Wireless , 2015, 2015 IEEE International Conference on Computer Vision (ICCV).
[25] Theodore S. Rappaport,et al. A Flexible Millimeter-Wave Channel Sounder With Absolute Timing , 2017, IEEE Journal on Selected Areas in Communications.
[26] Jaime Lloret,et al. An Intelligent handover process algorithm in 5G networks: The use case of mobile cameras for environmental surveillance , 2017, 2017 IEEE International Conference on Communications Workshops (ICC Workshops).
[27] Masahiro Morikura,et al. Measurement Method of Temporal Attenuation by Human Body in Off-the-Shelf 60 GHz WLAN with HMM-Based Transmission State Estimation , 2018, Wirel. Commun. Mob. Comput..
[28] Edward W. Knightly,et al. IEEE 802.11ay: Next-Generation 60 GHz Communication for 100 Gb/s Wi-Fi , 2017, IEEE Communications Magazine.
[29] Sander Oude Elberink,et al. Accuracy and Resolution of Kinect Depth Data for Indoor Mapping Applications , 2012, Sensors.
[30] Anit Kumar Sahu,et al. Federated Optimization in Heterogeneous Networks , 2018, MLSys.
[31] King Ngi Ngan,et al. Segmentation and Tracking Multiple Objects Under Occlusion From Multiview Video , 2011, IEEE Transactions on Image Processing.
[32] Sundeep Rangan,et al. An MDP model for optimal handover decisions in mmWave cellular networks , 2015, 2016 European Conference on Networks and Communications (EuCNC).
[33] Sanjiv Kumar,et al. cpSGD: Communication-efficient and differentially-private distributed SGD , 2018, NeurIPS.
[34] Masahiro Morikura,et al. Communication-Efficient Multimodal Split Learning for mmWave Received Power Prediction , 2020, IEEE Communications Letters.
[35] Furong Wang,et al. A trajectory-aware handoff algorithm based on GPS information , 2010, Ann. des Télécommunications.
[36] Lei Chen,et al. Revolution of Self-Organizing Network for 5G MmWave Small Cell Management: From Reactive to Proactive , 2018, IEEE Wireless Communications.
[37] Dit-Yan Yeung,et al. Convolutional LSTM Network: A Machine Learning Approach for Precipitation Nowcasting , 2015, NIPS.
[38] G. E. Zein,et al. Influence of the human activity on wide-band characteristics of the 60 GHz indoor radio channel , 2004, IEEE Transactions on Wireless Communications.
[39] Mehdi Bennis,et al. GADMM: Fast and Communication Efficient Framework for Distributed Machine Learning , 2019, J. Mach. Learn. Res..
[40] Blaise Agüera y Arcas,et al. Communication-Efficient Learning of Deep Networks from Decentralized Data , 2016, AISTATS.
[41] Hongyi Zhang,et al. mixup: Beyond Empirical Risk Minimization , 2017, ICLR.
[42] Takayuki Nishio,et al. Extreme URLLC: Vision, Challenges, and Key Enablers , 2020, ArXiv.
[43] Richard Nock,et al. Advances and Open Problems in Federated Learning , 2019, Found. Trends Mach. Learn..
[44] Sergey Ioffe,et al. Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift , 2015, ICML.
[45] Masahiro Morikura,et al. Proactive Received Power Prediction Using Machine Learning and Depth Images for mmWave Networks , 2018, IEEE Journal on Selected Areas in Communications.
[46] Geoffrey E. Hinton,et al. On the importance of initialization and momentum in deep learning , 2013, ICML.