Chun-Chieh Wang
Department of Electrical Engineering, National Yunlin University of Science
and Technology, 123 University Road, Section 3, Douliou, Yunlin 64002,
Taiwan
pp. 39–42
ABSTRACT
For nearly two decades, many massage machine (MM) manufacturers have developed
a lot of distinct types of FMM. Common massage goods on the sale are roller
and pressing models. However, stimulating all acupuncture points (AP) is
extremely hard for distinct sizes of feet accurately. Besides, the massage
roller cannot be manipulated all alone. Thence, the author proposed a novel
computer vision skillfulness to make out the foot acupuncture points (FAP)
by ANN. First, the sole of users’ soles is captured and image preprocessing
procedures are executed to segment the region of interest (ROI) of soles.
FAP is mapped to foot images (FI) to obtain reference massage positions.
Afterwards, the YCbCr color space is used to part the brightness to get
done the segmentation of the FI in the skin detection. To improve the success
rate of image segmentation (IS), ANN is used to train plantar image set.
Finally, a FMM was redesigned to raise the rate of ID and user convenience.
Experimental results confirm the practicality of the proposed ID method
for FMM.
ARTICLE INFO
Article History
Received 25 November 2022
Accepted 01 September 2023
Keywords
Artificial neural network (ANN)
Foot massage machines (FMM)
Image detection (ID)
JRNAL10106
Download article(PDF)