Human Activity Recognition in Smart Cities from Smart Watch Data using LSTM Recurrent Neural Networks
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[1] S. Ahuja,et al. An Exploration: Alzheimer's Disease Classification Based on Convolutional Neural Network , 2022, BioMed research international.
[2] H. Garg,et al. Spoofing detection system for e-health digital twin using EfficientNet Convolution Neural Network , 2022, Multimedia Tools and Applications.
[3] B. Sharma,et al. Edge, Fog and Cloud-based Smart Communications for IoT Network based Services & Applications , 2021, 2021 International Conference on Artificial Intelligence and Machine Vision (AIMV).
[4] Olfa Kanoun,et al. Edge Devices for Internet of Medical Things: Technologies, Techniques, and Implementation , 2021, Electronics.
[5] Fadi Al-Turjman,et al. Load Balancing Algorithm on the Immense Scale of Internet of Things in SDN for Smart Cities , 2021, Sustainability.
[6] Bhisham Sharma,et al. Essence of Scalability in Wireless Sensor Network for Smart City Applications , 2021 .
[7] Bhisham Sharma,et al. A survey on IoT architectures, protocols, security and smart city based applications , 2017, 2017 8th International Conference on Computing, Communication and Networking Technologies (ICCCNT).
[8] Nicholas D. Lane,et al. From smart to deep: Robust activity recognition on smartwatches using deep learning , 2016, 2016 IEEE International Conference on Pervasive Computing and Communication Workshops (PerCom Workshops).
[9] Gary M. Weiss,et al. Smartwatch-based activity recognition: A machine learning approach , 2016, 2016 IEEE-EMBS International Conference on Biomedical and Health Informatics (BHI).
[10] Mikkel Baun Kjærgaard,et al. Smart Devices are Different: Assessing and MitigatingMobile Sensing Heterogeneities for Activity Recognition , 2015, SenSys.
[11] Nicholas D. Lane,et al. DeepEar: robust smartphone audio sensing in unconstrained acoustic environments using deep learning , 2015, UbiComp.
[12] Ying Gao,et al. ZOE: A Cloud-less Dialog-enabled Continuous Sensing Wearable Exploiting Heterogeneous Computation , 2015, MobiSys.
[13] Nicholas D. Lane,et al. Can Deep Learning Revolutionize Mobile Sensing? , 2015, HotMobile.
[14] P. András,et al. PD Disease State Assessment in Naturalistic Environments Using Deep Learning , 2015, AAAI.
[15] Georg Heigold,et al. Small-footprint keyword spotting using deep neural networks , 2014, 2014 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).
[16] Ninghui Sun,et al. DianNao: a small-footprint high-throughput accelerator for ubiquitous machine-learning , 2014, ASPLOS.
[17] Miguel A. Labrador,et al. A Survey on Human Activity Recognition using Wearable Sensors , 2013, IEEE Communications Surveys & Tutorials.
[18] Gary M. Weiss,et al. Applications of mobile activity recognition , 2012, UbiComp.
[19] Gary M. Weiss,et al. Activity recognition using cell phone accelerometers , 2011, SKDD.
[20] Deborah Estrin,et al. Using mobile phones to determine transportation modes , 2010, TOSN.
[21] Jun Yang,et al. Toward physical activity diary: motion recognition using simple acceleration features with mobile phones , 2009, IMCE '09.
[22] Norbert Gyorbíró,et al. An Activity Recognition System For Mobile Phones , 2009, Mob. Networks Appl..
[23] James A. Landay,et al. The Mobile Sensing Platform: An Embedded Activity Recognition System , 2008, IEEE Pervasive Computing.
[24] L. Breiman. Random Forests , 2001, Encyclopedia of Machine Learning and Data Mining.
[25] Gary M. Weiss,et al. The Benefits of Personalized Smartphone-Based Activity Recognition Models , 2014, SDM.
[26] Tara N. Sainath,et al. The shared views of four research groups ) , 2012 .
[27] Thomas Plötz,et al. Using unlabeled data in a sparse-coding framework for human activity recognition , 2014, Pervasive Mob. Comput..