Composition of Motion From Video Animation Through Learning Local Transformations
Michalis Vrigkas (University of Western Macedonia); Virginia Tagka (University of Ioannina); Marina Plissiti (University of Ioannina); Christophoros Nikou (University of Ioannina)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
In this work, we solve the problem of motion representation in videos, according to local transformations applied to specific keypoints extracted from static the images. First, we compute the coordinates of the keypoints of the body or face through a pre-trained model, and then we introduce a convolutional neural network to estimate a dense motion field through optical flow. Next, we train a generative adversarial network that exploits the previous information to generate new images that resemble as much as possible the target frames. To reduce trembling and extract smooth movements, our model incorporates a low-pass spatio-temporal Gaussian filter. Results indicate that our method provides high performance and the movement of objects is accurate and robust.