Risk of Falling in a Timed Up and Go Test Using an UWB Radar and an Instrumented Insole
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Martin J.-D. Otis | Dominic Deslandes | Johannes C. Ayena | Lydia Chioukh | D. Deslandes | M. Otis | L. Chioukh
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