Matches in SemOpenAlex for { <https://semopenalex.org/work/W4310988722> ?p ?o ?g. }
- W4310988722 abstract "Locomotion mode recognition provides the prosthesis control with the information on when to switch between different walking modes, whereas the gait phase detection indicates where we are in the gait cycle. But powered prostheses often implement a different control strategy for each locomotion mode to improve the functionality of the prosthesis. Existing studies employed several classical machine learning methods for locomotion mode recognition. However, these methods were less effective for data with complex decision boundaries and resulted in misclassifications of motion recognition. Deep learning-based methods potentially resolve these limitations as it is a special type of machine learning method with more sophistication. Therefore, this study evaluated three deep learning-based models for locomotion mode recognition, namely recurrent neural network (RNN), long short-term memory (LSTM) neural network, and convolutional neural network (CNN), and compared the recognition performance of deep learning models to the machine learning model with random forest classifier (RFC). The models are trained from data of one inertial measurement unit (IMU) placed on the lower shanks of four able-bodied subjects to perform four walking modes, including level ground walking (LW), standing (ST), and stair ascent/stair descent (SA/SD). The results indicated that CNN and LSTM models outperformed other models, and these models were promising for applying locomotion mode recognition in real-time for robotic prostheses." @default.
- W4310988722 created "2022-12-22" @default.
- W4310988722 creator A5010914606 @default.
- W4310988722 creator A5044455208 @default.
- W4310988722 creator A5053382705 @default.
- W4310988722 creator A5076771782 @default.
- W4310988722 creator A5080620663 @default.
- W4310988722 creator A5085716830 @default.
- W4310988722 date "2022-11-29" @default.
- W4310988722 modified "2023-10-18" @default.
- W4310988722 title "Comparison of machine learning and deep learning-based methods for locomotion mode recognition using a single inertial measurement unit" @default.
- W4310988722 cites W1550078033 @default.
- W4310988722 cites W1608401492 @default.
- W4310988722 cites W1862880745 @default.
- W4310988722 cites W1967516228 @default.
- W4310988722 cites W1968094409 @default.
- W4310988722 cites W1973585667 @default.
- W4310988722 cites W1989721073 @default.
- W4310988722 cites W1995894521 @default.
- W4310988722 cites W2010642057 @default.
- W4310988722 cites W2023964991 @default.
- W4310988722 cites W2041179708 @default.
- W4310988722 cites W2051071129 @default.
- W4310988722 cites W2057816579 @default.
- W4310988722 cites W2061529781 @default.
- W4310988722 cites W2070278918 @default.
- W4310988722 cites W2089274876 @default.
- W4310988722 cites W2090283616 @default.
- W4310988722 cites W2106951868 @default.
- W4310988722 cites W2119008936 @default.
- W4310988722 cites W2121680738 @default.
- W4310988722 cites W2124076342 @default.
- W4310988722 cites W2143661416 @default.
- W4310988722 cites W2167221577 @default.
- W4310988722 cites W2193627371 @default.
- W4310988722 cites W2222399534 @default.
- W4310988722 cites W2295659876 @default.
- W4310988722 cites W2331577291 @default.
- W4310988722 cites W2342977071 @default.
- W4310988722 cites W2510569194 @default.
- W4310988722 cites W2525083240 @default.
- W4310988722 cites W2527859191 @default.
- W4310988722 cites W2537821842 @default.
- W4310988722 cites W2551239383 @default.
- W4310988722 cites W2559852960 @default.
- W4310988722 cites W2600842288 @default.
- W4310988722 cites W2675669017 @default.
- W4310988722 cites W2742425536 @default.
- W4310988722 cites W2758162149 @default.
- W4310988722 cites W2782334838 @default.
- W4310988722 cites W2796711653 @default.
- W4310988722 cites W2805768015 @default.
- W4310988722 cites W2884542918 @default.
- W4310988722 cites W2897753137 @default.
- W4310988722 cites W2902379278 @default.
- W4310988722 cites W2908972643 @default.
- W4310988722 cites W2912182936 @default.
- W4310988722 cites W2919115771 @default.
- W4310988722 cites W2944662892 @default.
- W4310988722 cites W2946288711 @default.
- W4310988722 cites W2971733775 @default.
- W4310988722 cites W2995883752 @default.
- W4310988722 cites W3003912462 @default.
- W4310988722 cites W3025462103 @default.
- W4310988722 cites W3041651957 @default.
- W4310988722 cites W3041675192 @default.
- W4310988722 cites W3042836088 @default.
- W4310988722 cites W3044651858 @default.
- W4310988722 cites W3080910328 @default.
- W4310988722 cites W3094389090 @default.
- W4310988722 cites W3095662393 @default.
- W4310988722 cites W3120935742 @default.
- W4310988722 cites W3133903946 @default.
- W4310988722 cites W3175585004 @default.
- W4310988722 cites W3194730353 @default.
- W4310988722 cites W4226341291 @default.
- W4310988722 doi "https://doi.org/10.3389/fnbot.2022.923164" @default.
- W4310988722 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/36524219" @default.
- W4310988722 hasPublicationYear "2022" @default.
- W4310988722 type Work @default.
- W4310988722 citedByCount "1" @default.
- W4310988722 countsByYear W43109887222023 @default.
- W4310988722 crossrefType "journal-article" @default.
- W4310988722 hasAuthorship W4310988722A5010914606 @default.
- W4310988722 hasAuthorship W4310988722A5044455208 @default.
- W4310988722 hasAuthorship W4310988722A5053382705 @default.
- W4310988722 hasAuthorship W4310988722A5076771782 @default.
- W4310988722 hasAuthorship W4310988722A5080620663 @default.
- W4310988722 hasAuthorship W4310988722A5085716830 @default.
- W4310988722 hasBestOaLocation W43109887221 @default.
- W4310988722 hasConcept C108583219 @default.
- W4310988722 hasConcept C119857082 @default.
- W4310988722 hasConcept C147168706 @default.
- W4310988722 hasConcept C151800584 @default.
- W4310988722 hasConcept C153180895 @default.
- W4310988722 hasConcept C154945302 @default.
- W4310988722 hasConcept C169258074 @default.
- W4310988722 hasConcept C173906292 @default.
- W4310988722 hasConcept C41008148 @default.
- W4310988722 hasConcept C42407357 @default.