Towards unsupervised physical activity recognition using smartphone accelerometers (original) (raw)
References
Alshurafa N, Xu W, Liu JJ, Huang MC, Mortazavi B, Roberts CK, Sarrafzadeh M (2014) Designing a robust activity recognition framework for health and exergaming using wearable sensors. IEEE Journal of Biomedical and Health Informatics 18(5):1636–1646 Article Google Scholar
Arthur D (2007) Vassilvitskii, S.: k-means++: The advantages of careful seeding. In: Proceedings of the eighteenth annual ACM-SIAM symposium on Discrete algorithms. pp. 1027–1035. Society for Industrial and Applied Mathematics
Ashton D (1993) mondiale de la santé. Bureau régional de l’Europe, O.: Exercise: health benefits and risks. WHO. Regional Office for Europe
Bader GD, Hogue CW (2003) An automated method for finding molecular complexes in large protein interaction networks. BMC Bioinf 4(1):2 Article Google Scholar
Bulling A, Ward JA, Gellersen H (2012) Multimodal recognition of reading activity in transit using body-worn sensors. ACM Transactions on Applied Perception (TAP) 9(1):2 Google Scholar
Bulling A, Blanke U, Schiele B (2014) A tutorial on human activity recognition using body-worn inertial sensors. ACM Comput Surv 46(3):33 Article Google Scholar
Casale P, Pujol O, Radeva P (2012) Personalization and user verification in wearable systems using biometric walking patterns. Pers Ubiquit Comput 16(5):563–580 Article Google Scholar
Dempster AP, Laird NM, Rubin DB, other (1977) Maximum likelihood from incomplete data via the em algorithm. J R Stat Soc 39(1):1–38 MathSciNetMATH Google Scholar
De Vries SI, Garre FG, Engbers LH, Hildebrandt VH, Van Buuren S (2011) Evaluation of neural networks to identify types of activity using accelerometers. Med Sci Sports Exerc 43(1):101–7 Article Google Scholar
Ermes M, Parkka J, Mantyjarvi J, Korhonen I (2008) Detection of daily activities and sports with wearable sensors in controlled and uncontrolled conditions. IEEE Trans Inf Technol Biomed 12(1):20–26 Article Google Scholar
Fowlkes EB, Mallows CL (1983) A method for comparing two hierarchical clusterings. J Am Stat Assoc 78(383):553–569 ArticleMATH Google Scholar
Hong YJ, Kim IJ, Ahn SC, Kim HG (2010) Mobile health monitoring system based on activity recognition using accelerometer. Simul Model Pract Theory 18(4):446–455 Article Google Scholar
Hospedales TM, Li J, Gong S, Xiang T (2011) Identifying rare and subtle behaviors: A weakly supervised joint topic model. IEEE TPAMI 33(12):2451–2464 Article Google Scholar
Kaufman L, Rousseeuw P (1987) Clustering by means of medoids. North-Holland
Khan AM, Lee YK, Lee SY, Kim TS (2010) A triaxial accelerometer-based physical-activity recognition via augmented-signal features and a hierarchical recognizer. IEEE Trans Inf Technol Biomed 14(5):1166–1172 Article Google Scholar
Kirkup JA, Rowlands DD, Thiel DV (2014) Dynamic tracking of a 2.4 ghz waist mounted beacon for indoor basketball player positioning. Procedia Engineering 72:108–113 Article Google Scholar
Kwapisz JR, Weiss GM, Moore SA (2011) Activity recognition using cell phone accelerometers. ACM SigKDD Explorations Newsletter 12(2):74–82 Article Google Scholar
Lee JB, Mellifont RB, Burkett BJ, James DA (2013) Detection of illegal race walking: a tool to assist coaching and judging. Sensors 13(12):16065–16074 Article Google Scholar
Lester J, Choudhury T, Borriello G (2006) A practical approach to recognizing physical activities. In: Pervasive Computing. Springer, pp 1–16
Nie L, Akbari M, Li T, Chua TS (2014) A joint local-global approach for medical terminology assignment. In: Medical Information Retrieval Workshop at SIGIR 2014. p. 24
Nie L, Li T, Akbari M, Shen J, Chua TS (2014) Wenzher: Comprehensive vertical search for healthcare domain. In: Proceedings of the 37th international ACM SIGIR conference on Research & development in information retrieval. pp. 1245–1246. ACM
Nie L, Wang M, Zhang L, Yan S, Bo Z, Chua TS (2014) Disease inference from health-related questions via sparse deep learning. IEEE Trans Knowl Data Eng 27(8):2107–2119 Article Google Scholar
Liu Y, Nie L, Han L, Zhang L, Rosenblum DS (2015) Action2activity: Recognizing complex activities from sensor data. In: Artificial Intelligence (IJCAI), 2015 International Joint Conference on. pp. 1–8
Liu L, Peng Y, Liu M, Huang Z (2015) Sensor-based human activity recognition system with a multilayered model using time series shapelets. Knowl-Based Syst 90:138–152 Article Google Scholar
Nie L, Zhang L, Yang Y, Wang M (2015) Hong, Richang, C.T.S.: Beyond doctors: Future health prediction from multimedia and multimodal observations. In: Proceedings of the 2015 ACM conference on Multimedia. pp. 1–9. ACM
Nie L, Zhao YL, Akbari M, Shen J, Chua TS (2015) Bridging the vocabulary gap between health seekers and healthcare knowledge. IEEE Trans Knowl Data Eng 27(2):396–409 Article Google Scholar
Patterson DJ, Fox D, Kautz H, Philipose M (2005) Fine-grained activity recognition by aggregating abstract object usage. In: IEEE International Symposium on Wearable Computers. pp. 44–51
Ravi N, Dandekar N, Mysore P, Littman ML (2005) Activity recognition from accelerometer data. In: AAAI. vol. 5, pp. 1541–1546
Revelle W (1979) Hierarchical cluster analysis and the internal structure of tests. Multivar Behav Res 14(1):57–74 Article Google Scholar
Sun L, Liu L, Wei Y, Zhong J, Luo D, Liu M, Monkaresi H (2014) Apply autocorrelation and forward difference to measure vital signs using ordinary camera. In: Smart Health, pp. 150–159. Springer
Taniguchi A, Watanabe K, Kurihara Y (2012) Measurement and analyze of jump shoot motion in basketball using a 3-d acceleration and gyroscopic sensor. In: SICE annual conference (SICE), 2012 Proceedings of. pp. 361–365. IEEE
Vail DL, Veloso MM, Lafferty JD (2007) Conditional random fields for activity recognition. In: International joint conference on autonomous agents and multiagent systems. p. 235
Van Kasteren T, Krose B (2007) Bayesian activity recognition in residence for elders
Wei Y, Liu L, Zhong J, Lu Y, Sun L (2015) Unsupervised race walking recognition using smartphone accelerometers. In: Knowledge Science, Engineering and Management. Springer, pp 691–702
Yan Y, Liu G, Ricci E, Sebe N (2013) Multi-task linear discriminant analysis for multi-view action recognition. In: Image Processing (ICIP), 2013 20th IEEE International Conference on. pp. 2842–2846. IEEE
Yan Y, Ricci E, Subramanian R, Lanz O, Sebe N (2013) No matter where you are: Flexible graph-guided multi-task learning for multi-view head pose classification under target motion. In: Computer Vision (ICCV), 2013 IEEE International Conference on. pp. 1177–1184. IEEE
Yan Y, Ricci E, Liu G, Sebe N (2015) Egocentric daily activity recognition via multitask clustering. IEEE transactions on image processing: a publication of the IEEE Signal Processing Society 24(10):2984–2995 ArticleMathSciNet Google Scholar
Yan Y, Yang Y, Meng D, Liu G, Tong W, Hauptmann AG, Sebe N (2015) Event oriented dictionary learning for complex event detection. IEEE Trans Image Process 24(6):1867–1878 ArticleMathSciNet Google Scholar
Zhang M, Sawchuk AA (2013) Human daily activity recognition with sparse representation using wearable sensors. IEEE Journal of Biomedical and Health Informatics 17(3):553–560 Article Google Scholar
Zhang L, Gao Y, Ji R, Xia Y, Dai Q, Li X (2014) Actively learning human gaze shifting paths for semantics-aware photo cropping. IEEE Trans Image Process 23(5):2235–2245 ArticleMathSciNet Google Scholar
Zhang L, Gao Y, Xia Y, Dai Q, Li X (2015) A fine-grained image categorization system by cellet-encoded spatial pyramid modeling. IEEE Trans Ind Electron 62(1):564–571 Article Google Scholar
Zhang L, Gao Y, Xia Y, Lu K, Shen J, Ji R (2014) Representative discovery of structure cues for weakly-supervised image segmentation. IEEE Trans Multimedia 16(2):470–479 Article Google Scholar
Zhang L, Han Y, Yang Y, Song M, Yan S, Tian Q (2013) Discovering discriminative graphlets for aerial image categories recognition. IEEE Trans Image Process 22(12):5071–5084 ArticleMathSciNet Google Scholar
Zhang L, Xia Y, Mao K, Ma H, Shan Z (2015) An effective video summarization framework toward handheld devices. IEEE Trans Ind Electron 62 (2):1309–1316 Article Google Scholar
Zhang L, Yang Y, Gao Y, Yu YT, Wang C, Li X (2014) A probabilistic associative model for segmenting weakly supervised images. IEEE Trans Image Process 23(9):4150–4159 ArticleMathSciNet Google Scholar
Zheng Y, Wong WK, Guan X, Trost S (2013) Physical activity recognition from accelerometer data using a multi-scale ensemble method. In: IAAI
Zhong J, Liu L, Wei Y, Luo D, Sun L, Lu Y (2014) Personalized activity recognition using molecular complex detection clustering. In: Ubiquitous Intelligence and Computing, 2014 IEEE 11th Intl Conf on and IEEE 11th Intl Conf on and Autonomic and Trusted Computing, and IEEE 14th Intl Conf on Scalable Computing and Communications and Its Associated Workshops (UTC-ATC-ScalCom). pp. 850–854. IEEE