Video stabilization method based on iterative strategy of recurrent neural network
A technology of cyclic neural network and video stabilization, applied in the field of remote sensing image processing, can solve the problem of not being able to make good use of timing information
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[0047] The present invention combines remote sensing image processing technology with deep learning to provide a video stabilization method based on a cyclic neural network iterative strategy to achieve stabilization of shaking sequence images and improvement of picture quality. The cyclic neural network can transmit the motion state between video frames in a long-term sequence, and provide a reference for the current frame distortion, making the stabilized picture more coherent and clear. The idea of this method is simple and clear, avoiding the unreal jitter artifacts caused by the loss of the timing relationship between frames, and updating the learned hidden state through the iterative strategy of the recurrent neural network, thereby effectively improving the stability effect.
[0048] combine figure 1 , detail the main process steps of the inventive method:
[0049] Step 1: Use a jitter video acquisition and stabilization processing hardware device to obtain paired vi...
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