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Motion Capture - Leg Limp

Limp Detection in Leg using OpenCV and MediaPipe with Motion Capture

This project combines the power of OpenCV and MediaPipe with advanced motion capture techniques to create a robust system for real-time limp detection in the leg. By integrating motion capture capabilities, the application achieves enhanced precision in identifying and analyzing irregularities in leg movement.

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MediaPipe - Pose Landmark

I. You need the videos

No.Limp.in.Leg.Normal.mp4
No.Limp.in.Leg.Normal.mp4

II. Then, you capture the motion

Here is the visualize graphic about the leg range of motion data captured from the video

Normal (right-left) leg Limp (right-left) leg
Normal (right) leg & Limp (right) leg Normal (left) leg & Limp (left) leg

III. Take Conclusion

In image Limp (right-left) leg, it can be observed that there is a significant difference in the range of motion between the left and right legs. From this, it can be assumed that there is a limp in the left leg. The range of motion angle in the left leg (red line) tends to be smaller than the range of motion angle in the right leg because, in the limping left leg, the joint tends to lock the angle to alleviate pain caused by excessive leg movement. The larger the range of motion angle, the more pronounced the perceived pain.


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