Efficient Real-Time Video Stabilization With A Novel Least Squares Formulation
Jianwei Ke, Alex Watras, Jae-Jun Kim, Hewei Liu, Hongrui Jiang, Yu Hen Hu
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:08:56
We present a novel video stabilization algorithm (LSstab) that removes unwanted motions in real-time. LSstab is based on a novel least squares formulation of the smoothing cost function to alleviate the undesirable camera jitter. A recursive least square solver is derived to minimize the smoothing cost function with an $O(N)$ computation complexity. LSstab is evaluated using a suite of publicly available videos against the state of the art video stabilization methods. Results show LSstab reaches comparable or better performance, achieving real-time processing speed when a GPU is used.
Chairs:
Satish Kumar Singh