Abstract
In this paper, a multipath convolutional neural network (MP-CNN) is proposed for rehabilitation exercise recognition using sensor data. It consists of two novel components: a dynamic convolutional neural network (D-CNN) and a state transition probability CNN (S-CNN). In the D-CNN, Gaussian mixture models (GMMs) are exploited to capture the distribution of sensor data for the body movements of the physical rehabilitation exercises. Then, the input signals and the GMMs are screened into different segments. These form multiple paths in the CNN. The S-CNN uses a modified Lempel–Ziv–Welch (LZW) algorithm to extract the transition probabilities of hidden states as discriminate features of different movements. Then, the D-CNN and the S-CNN are combined to build the MP-CNN. To evaluate the rehabilitation exercise, a special evaluation matrix is proposed along with the deep learning classifier to learn the general feature representation for each class of rehabilitation exercise at different levels. Then, for any rehabilitation exercise, it can be classified by the deep learning model and compared to the learned best features. The distance to the best feature is used as the score for the evaluation. We demonstrate our method with our collected dataset and several activity recognition datasets. The classification results are superior when compared to those obtained using other deep learning models, and the evaluation scores are effective for practical applications.
Highlights
Rehabilitation exercise is one of the most important steps for recovery after surgery, especially after joint disease surgery
We used a wearable human activity recognition folder (WHARF) dataset [35] and a rehabilitation action evaluation dataset which we collected for our experiments
multipath convolutional neural networks (CNNs) (MP-CNN)-1of indicates that theMP-CNN, GB-CNN is used in the part ofwere the MP-CNN, the following experiments, MP-CNN-1 indicates that the GB-CNN is used in the top part of the MPthe following experiments, MP-CNN-1 indicates that the is used in the top part of the MPwhereas the state transition probability CNN (S-CNN) is used in the bottom part
Summary
Rehabilitation exercise is one of the most important steps for recovery after surgery, especially after joint disease surgery. A home exercise program is common for rehabilitation treatment where a patient performs a set of physical exercises in a home-based environment. Such exercises are not always successful in helping the patients reach full recovery. One of the main barriers is that patients do not comply with the prescribed exercise plans. This program lacks supervision and the monitoring of patient performance. For vision-based methods, human actions can be viewed as a set of spatio-temporal changes of appearances or motions. Methods devoted to effective visual representation for action recognition in videos or still images include shape-based movement analysis [1], temporal
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