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. .. ,

. .. , 42 2.4 Comparison of the number of tested values of the parameter number of segments with the FDTW and IDDTW. Datasets are sorted according to the length of the time series (x-axis), Visual comparison of two time series from the two classes of the coffee dataset

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A. , Captioned picture of the adjustable wireless wheelchair ergometer (FRET-2)

A. , Schematic principle of the six-component force and torque sensor (patent WO 1995001556 A1) mounted of both rear wheels of the MWC eld ergometer used in this study (FRET-2). Legend, p.106

, Balance of forces applied to a manual wheelchair during propulsion. For the clarity of the gure, the analysis of the movement of the {subject + MWC} system is reduced to that of the system's centre of gravity, G [De Saint Remy, 2005.

, Locations of passive markers for the kinematic analysis of manual wheelchair locomotion

B. , In the rst case (a) the data points of the segment are far from the average, in the second case (b) they are close to the average. Replacing data points of a segment by their average introduces an error that the can be measured from the gap between the points and the average, p.112

C. , Time series are normalized. The two horizontal lines delimit the interval corresponding to twice the standard deviation and minus two times the standard deviation of the points of the time series, This gure shows the rst 100 points of the rst time series of the fordA dataset available in the UCR, 2015.

B. , Two-by-two comparison of the classication errors of the algorithm 1-Nearest Neighbor (1-NN) using Euclidean distance with 1-NN using two variations of the temporal warping algorithm on raw data and compact data

, Distribution of data around the mean

, Estimated probability density of data

C. , Estimated probability density of data for Cauchy's law, p.127

C. , Estimated probability density of data for Student's law, p.128

, Estimated probability density of data for Logistic law, p.128

.. .. Datasets, 68 3.2 Comparison of the Rand Index of SUSH (RI_SUSh) and FOTS-SUSh (RI_FOTS). The best Rand Index is in bold

. Comparison-between-k-shape and . .. Fots-sushapelet, , p.70

. .. , 2 Asymmetry (Edit distance) of subjects' propulsion with regard to their number of years of practice, vol.87

, Anthropometric and physiological characteristics of the subjects who participated in this study

, Occurrence frequency of each cycle type in each subject's displacements, p.90

, Similarity matrix between all wheelchair users