{ "id": "2004.02853", "version": "v1", "published": "2020-04-06T17:45:43.000Z", "updated": "2020-04-06T17:45:43.000Z", "title": "Optical Flow Estimation in the Deep Learning Age", "authors": [ "Junhwa Hur", "Stefan Roth" ], "comment": "To appear as a book chapter in Modelling Human Motion, N. Noceti, A. Sciutti and F. Rea, Eds., Springer, 2020", "categories": [ "cs.CV", "cs.LG" ], "abstract": "Akin to many subareas of computer vision, the recent advances in deep learning have also significantly influenced the literature on optical flow. Previously, the literature had been dominated by classical energy-based models, which formulate optical flow estimation as an energy minimization problem. However, as the practical benefits of Convolutional Neural Networks (CNNs) over conventional methods have become apparent in numerous areas of computer vision and beyond, they have also seen increased adoption in the context of motion estimation to the point where the current state of the art in terms of accuracy is set by CNN approaches. We first review this transition as well as the developments from early work to the current state of CNNs for optical flow estimation. Alongside, we discuss some of their technical details and compare them to recapitulate which technical contribution led to the most significant accuracy improvements. Then we provide an overview of the various optical flow approaches introduced in the deep learning age, including those based on alternative learning paradigms (e.g., unsupervised and semi-supervised methods) as well as the extension to the multi-frame case, which is able to yield further accuracy improvements.", "revisions": [ { "version": "v1", "updated": "2020-04-06T17:45:43.000Z" } ], "analyses": { "keywords": [ "deep learning age", "computer vision", "current state", "formulate optical flow estimation", "convolutional neural networks" ], "tags": [ "book chapter" ], "note": { "typesetting": "TeX", "pages": 0, "language": "en", "license": "arXiv", "status": "editable" } } }