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Mobile Systems Lab
https://mobile-systems.cl.cam.ac.uk/16 Feb 2024: Recent News. Our paper Exploring Longitudinal Cough, Breath, and Voice Data for COVID-19 Progression Prediction via Sequential Deep Learning: Model Development and Validation is out in JMIR and covered in ... Here is the syllabus of the new Mobile Health -
Emotion Recognition from Speech Signals byMel-Spectrogram and a…
https://mobile-systems.cl.cam.ac.uk/papers/EMBC24.pdf2 May 2024: New Jersey: Prentice Hall, 2011. [13] S. Hershey et al., “CNN architectures for large-scale audio classifica-tion,” in Proceedings of ICASSP, 2017, pp. -
Embracing the Imaginary:Deep Complex-valued Networks for Heart Murmur …
https://mobile-systems.cl.cam.ac.uk/papers/cinc23.pdf2 Nov 2023: URLhttps://doi.org/10.5281/zenodo.7303587. [14] Sarroff AM. Complex neural networks for audio. Ph.D.thesis, Dartmouth College, Hanover, New Hampshire, May2018. -
IMChew: Chewing Analysis using Earphone Inertial Measurement Units
https://mobile-systems.cl.cam.ac.uk/papers/bodysys24-yang.pdf2 May 2024: Meanwhile, LOSO CV better reflectsthe real-world application since all new users are unseen bythe system. ... This is inaccuratesince, during sessions of eating activities, participants pauseand stop chewing every now and then to put more foodin their -
Uncertainty-informed On-device PersonalisationUsing Early Exit…
https://mobile-systems.cl.cam.ac.uk/papers/eusipco23.pdf22 Jul 2023: V. CONCLUSIONThis paper puts forward a new method for on-device neural. -
Yawning Detection using Earphone Inertial Measurement Units
https://mobile-systems.cl.cam.ac.uk/papers/smartwear23.pdf4 Oct 2023: here were used, the class imbalance between training anddeployment would hinder the generalisability onto new data;in such a case, the dataset should be only be balanced as faras the proportion ... Associationfor Computing Machinery, New York, NY, USA, -
Uncertainty Quantification in Federated Learning for Heterogeneous…
https://mobile-systems.cl.cam.ac.uk/papers/FL-KDD23.pdf14 Jul 2023: ACM,New York, NY, USA, 10 pages. 1 INTRODUCTIONWith the proliferation of clinical data and devices, deep learning isbeing increasingly applied in the medical field, proving its effective-ness in various ... PMLR,1273–1282. [20] Attila Reiss and Didier -
UR2M: Uncertainty and Resource-Aware Event Detection on…
https://mobile-systems.cl.cam.ac.uk/papers/percom24.pdf5 Feb 2024: UR2M: Uncertainty and Resource-Aware Event. Detection on Microcontrollers. Hong Jia, Young D. Kwon, Dong Ma†, Nhat Pham‡, Lorena Qendro, Tam Vu and Cecilia Mascolo. University of Cambridge, Cambridge, UK †Singapore Management University, -
IEEE JOURNAL OF BIOMEDICAL AND HEALTH IN-FORMATICS 1…
https://mobile-systems.cl.cam.ac.uk/papers/JBHI24Xia.pdf8 Apr 2024: TingDang and Lorena Qendro are with Nokia Bell Labs (Cambridge),and Ting is also affiliated with the University of Cambridge and theUniversity of New South Wales. ... 4. We term the newposterior parameterized by α′, and the new regularizationfor the -
LifeLearner: Hardware-Aware Meta Continual Learning System for…
https://mobile-systems.cl.cam.ac.uk/papers/sensys23.pdf23 Oct 2023: 55] relying on a few samplesof new classes to adapt and learn have been proposed. ... The classifier is updatedin the inner loop (fast weights) to learn new classes swiftly.
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