Using pressure map sequences for recognition of on bed rehabilitation exercises.

IEEE J. Biomedical and Health Informatics(2014)

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摘要
Physical rehabilitation is an important process for patients recovering after surgery. In this paper, we propose and develop a framework to monitor on-bed range of motion exercises that allows physical therapists to evaluate patient adherence to set exercise programs. Using a dense pressure sensitive bedsheet, a sequence of pressure maps are produced and analyzed using manifold learning techniques. We compare two methods, Local Linear Embedding and Isomap, to reduce the dimensionality of the pressure map data. Once the image sequences are converted into a low dimensional manifold, the manifolds can be compared to expected prior data for the rehabilitation exercises. Furthermore, a measure to compare the similarity of manifolds is presented along with experimental results for five on-bed rehabilitation exercises. The evaluation of this framework shows that exercise compliance can be tracked accurately according to prescribed treatment programs.
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关键词
low dimensional manifold,rehabilitation exercise,patient recovery,expected prior data,pressure map sequences,on-bed range-of-motion exercise monitoring,exercise programs,patient adherence,manifold learning techniques,treatment programs,physical rehabilitation,image reconstruction,local linear embedding,patient rehabilitation,range of motion,isomap,image sequences,dense pressure sensitive bedsheet,pressure images,bed rehabilitation exercise recognition,manifold learning,surgery,medical image processing,patient treatment,physical therapists,training data,principal component analysis,manifolds,sensors
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