2020
DOI: 10.3390/s20143855
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Implicit and Explicit Regularization for Optical Flow Estimation

Abstract: In this paper, two novel and practical regularizing methods are proposed to improve existing neural network architectures for monocular optical flow estimation. The proposed methods aim to alleviate deficiencies of current methods, such as flow leakage across objects and motion consistency within rigid objects, by exploiting contextual information. More specifically, the first regularization method utilizes semantic information during the training process to explicitly regularize the produced optical flow fiel… Show more

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Cited by 2 publications
(2 citation statements)
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“…In the paper by Karageorgos et al [ 7 ], two novel and practical regularizing methods were proposed to improve existing neural network architectures for monocular optical flow estimation. These methods aim to alleviate the deficiencies of current methods, such as flow leakage across objects and motion consistency within rigid objects, by exploiting contextual information.…”
mentioning
confidence: 99%
“…In the paper by Karageorgos et al [ 7 ], two novel and practical regularizing methods were proposed to improve existing neural network architectures for monocular optical flow estimation. These methods aim to alleviate the deficiencies of current methods, such as flow leakage across objects and motion consistency within rigid objects, by exploiting contextual information.…”
mentioning
confidence: 99%
“…Semantic information extracted from segmentation masks and modified convolutional layers are utilized to guide the network to better performance. This work was presented in [11] outperforming the well-established FlowNet 2.0 [12] in multiple synthetic and realistic datasets.…”
Section: Contributions Towards the Objectivesmentioning
confidence: 99%