摘要
Foot progression angle (FPA) analysis is one of the core methods to detect gait pathologies as basic information to prevent foot injury from excessive in-toeing and out-toeing. Deep learning-based object detection can assist in measuring the FPA through plantar pressure images. This study aims to establish a precision model for determining the FPA. The precision detection of FPA can provide information with in-toeing, out-toeing, and rearfoot kinematics to evaluate the effect of physical therapy programs on knee pain and knee osteoarthritis. We analyzed a total of 1424 plantar images with three different You Only Look Once (YOLO) networks: YOLO v3, v4, and v5x, to obtain a suitable model for FPA detection. YOLOv4 showed higher performance of the profile-box, with average precision in the left foot of 100.00% and the right foot of 99.78%, respectively. Besides, in detecting the foot angle-box, the ground-truth has similar results with YOLOv4 (5.58 ± 0.10◦ vs. 5.86 ± 0.09◦, p = 0.013). In contrast, there was a significant difference in FPA between ground-truth vs. YOLOv3 (5.58 ± 0.10◦ vs. 6.07 ± 0.06◦, p < 0.001), and ground-truth vs. YOLOv5x (5.58 ± 0.10◦ vs. 6.75 ± 0.06◦, p < 0.001). This result implies that deep learning with YOLOv4 can enhance the detection of FPA.
原文 | ???core.languages.en_GB??? |
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文章編號 | 2786 |
期刊 | Sensors (Switzerland) |
卷 | 22 |
發行號 | 7 |
DOIs | |
出版狀態 | 已出版 - 1 4月 2022 |