TY - THES U1 - Master Thesis A1 - Jos, Dennis T1 - Human Activity Pattern Recognition from Accelerometry Data N2 - Ambulant studies are dependent on the behavior and compliance of subjects in their home environment. Especially during interventions on the musculoskeletal system, monitoring physical activity is essential, even for research on nutritional, metabolic, or neuromuscular issues. To support an ambulant study at the German Aerospace Center (DLR), a pattern recognition system for human activity was developed. Everyday activi-ties of static (standing, sitting, lying) and dynamic nature (walking, ascending stairs, descending stairs, jogging) were under consideration. Two tri-axial accelerometers were attached to the hip and parallel to the tibia. Pattern characterizing features from the time domain (mean, standard deviation, absolute maximum) and the frequency domain (main frequencies, spectral entropy, autoregressive coefficients, signal magni-tude area) were extracted. Artificial neural networks (ANN) with a feedforward topology were trained with backpropagation as supervised learning algorithm. An evaluation of the resulting classifier was conducted with 14 subjects completing an activity protocol and a free chosen course of activities. An individual ANN was trained for each subject. Accuracies of 87,99 % and 71,23 % were approached in classifying the activity protocol and the free run, respectively. Reliabilities of 96,49 % and 76,77 % were measured. These performance parameters represent a working ambulant physical activity monitor-ing system. KW - Tätigkeit KW - Mensch KW - Anerkennung KW - Activity recognition KW - accelerometer KW - artificial neural networks KW - ambulatory monitoring KW - supervised learning Y2 - 2013 U6 - https://nbn-resolving.org/urn:nbn:de:bsz:840-opus-741 UN - https://nbn-resolving.org/urn:nbn:de:bsz:840-opus-741 ER -