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  1. Artikel ; Online: Video Reenactment as Inductive Bias for Content-Motion Disentanglement.

    Albarracin, Juan F Hernandez / Ramirez Rivera, Adin

    IEEE transactions on image processing : a publication of the IEEE Signal Processing Society

    2022  Band 31, Seite(n) 2365–2374

    Abstract: Independent components within low-dimensional representations are essential inputs in several downstream tasks, and provide explanations over the observed data. Video-based disentangled factors of variation provide low-dimensional representations that ... ...

    Abstract Independent components within low-dimensional representations are essential inputs in several downstream tasks, and provide explanations over the observed data. Video-based disentangled factors of variation provide low-dimensional representations that can be identified and used to feed task-specific models. We introduce MTC-VAE, a self-supervised motion-transfer VAE model to disentangle motion and content from videos. Unlike previous work on video content-motion disentanglement, we adopt a chunk-wise modeling approach and take advantage of the motion information contained in spatiotemporal neighborhoods. Our model yields independent per-chunk representations that preserve temporal consistency. Hence, we reconstruct whole videos in a single forward-pass. We extend the ELBO's log-likelihood term and include a Blind Reenactment Loss as an inductive bias to leverage motion disentanglement, under the assumption that swapping motion features yields reenactment between two videos. We evaluate our model with recently-proposed disentanglement metrics and show that it outperforms a variety of methods for video motion-content disentanglement. Experiments on video reenactment show the effectiveness of our disentanglement in the input space where our model outperforms the baselines in reconstruction quality and motion alignment.
    Sprache Englisch
    Erscheinungsdatum 2022-03-15
    Erscheinungsland United States
    Dokumenttyp Journal Article
    ISSN 1941-0042
    ISSN (online) 1941-0042
    DOI 10.1109/TIP.2022.3153140
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  2. Buch ; Online: Video Reenactment as Inductive Bias for Content-Motion Disentanglement

    Albarracín, Juan F. Hernández / Rivera, Adín Ramírez

    2021  

    Abstract: We introduce a self-supervised motion-transfer VAE model to disentangle motion and content from video. Unlike previous work regarding content-motion disentanglement in videos, we adopt a chunk-wise modeling approach and take advantage of the motion ... ...

    Abstract We introduce a self-supervised motion-transfer VAE model to disentangle motion and content from video. Unlike previous work regarding content-motion disentanglement in videos, we adopt a chunk-wise modeling approach and take advantage of the motion information contained in spatiotemporal neighborhoods. Our model yields per-chunk representations that can be modeled independently and preserve temporal consistency. Hence, we reconstruct whole videos in a single forward-pass. We extend the ELBO's log-likelihood term and include a Blind Reenactment Loss as inductive bias to leverage motion disentanglement, under the assumption that swapping motion features yields reenactment between two videos. We test our model on recently-proposed disentanglement metrics, and show that it outperforms a variety of methods for video motion-content disentanglement. Experiments on video reenactment show the effectiveness of our disentanglement in the input space where our model outperforms the baselines in reconstruction quality and motion alignment.

    Comment: Project page and source code at https://mipl.gitlab.io/mtc-vae/
    Schlagwörter Computer Science - Computer Vision and Pattern Recognition ; Computer Science - Machine Learning
    Thema/Rubrik (Code) 004
    Erscheinungsdatum 2021-01-30
    Erscheinungsland us
    Dokumenttyp Buch ; Online
    Datenquelle BASE - Bielefeld Academic Search Engine (Lebenswissenschaftliche Auswahl)

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