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@ -133,9 +133,9 @@ Dense Optical Flow in OpenCV.js |
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Lucas-Kanade method computes optical flow for a sparse feature set (in our example, corners detected |
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using Shi-Tomasi algorithm). OpenCV.js provides another algorithm to find the dense optical flow. It |
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computes the optical flow for all the points in the frame. It is based on Gunner Farneback's |
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computes the optical flow for all the points in the frame. It is based on Gunnar Farneback's |
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algorithm which is explained in "Two-Frame Motion Estimation Based on Polynomial Expansion" by |
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Gunner Farneback in 2003. |
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Gunnar Farneback in 2003. |
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We use the function: **cv.calcOpticalFlowFarneback (prev, next, flow, pyrScale, levels, winsize, |
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iterations, polyN, polySigma, flags)** |
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