Standard

Enhancement of Consistent Depth Estimation for Monocular Videos Approach. / Свейлам, Мохамед Нассер Хассан ; Толстокулаков, Николай Юрьевич.

Computer Science & Information Technology (CS & IT). 2021. p. 110-115.

Research output: Chapter in Book/Report/Conference proceedingConference contributionResearchpeer-review

Harvard

Свейлам, МНХ & Толстокулаков, НЮ 2021, Enhancement of Consistent Depth Estimation for Monocular Videos Approach. in Computer Science & Information Technology (CS & IT). pp. 110-115. https://doi.org/10.5121/csit.2021.110910

APA

Свейлам, М. Н. Х., & Толстокулаков, Н. Ю. (2021). Enhancement of Consistent Depth Estimation for Monocular Videos Approach. In Computer Science & Information Technology (CS & IT) (pp. 110-115) https://doi.org/10.5121/csit.2021.110910

Vancouver

Свейлам МНХ, Толстокулаков НЮ. Enhancement of Consistent Depth Estimation for Monocular Videos Approach. In Computer Science & Information Technology (CS & IT). 2021. p. 110-115 doi: 10.5121/csit.2021.110910

Author

Свейлам, Мохамед Нассер Хассан ; Толстокулаков, Николай Юрьевич. / Enhancement of Consistent Depth Estimation for Monocular Videos Approach. Computer Science & Information Technology (CS & IT). 2021. pp. 110-115

BibTeX

@inproceedings{36d4acda70e1462bb4de2285b77b879a,
title = "Enhancement of Consistent Depth Estimation for Monocular Videos Approach",
abstract = "Depth estimation has made great progress in the last few years due to its applications in robotics science and computer vision. Various methods have been developed and implemented to estimate the depth, without flickers and missing holes. Despite this progress, it is still one of the main challenges for researchers, especially for the video applications which have more difficulties such as the complexity of the neural network which affects the run time. Moreover to use such input like monocular video for depth estimation is considered an attractive idea, particularly for hand-held devices such as mobile phones, nowadays they are very popular for capturing pictures and videos. Here in this work, we focus on enhancing the existing consistent depth estimation for monocular videos approach to be with less usage of memory and with using less number of parameters without having a significant reduction in the quality of the depth estimation.",
author = "Свейлам, {Мохамед Нассер Хассан} and Толстокулаков, {Николай Юрьевич}",
year = "2021",
month = jun,
day = "26",
doi = "10.5121/csit.2021.110910",
language = "English",
pages = "110--115",
booktitle = "Computer Science & Information Technology (CS & IT)",

}

RIS

TY - GEN

T1 - Enhancement of Consistent Depth Estimation for Monocular Videos Approach

AU - Свейлам, Мохамед Нассер Хассан

AU - Толстокулаков, Николай Юрьевич

PY - 2021/6/26

Y1 - 2021/6/26

N2 - Depth estimation has made great progress in the last few years due to its applications in robotics science and computer vision. Various methods have been developed and implemented to estimate the depth, without flickers and missing holes. Despite this progress, it is still one of the main challenges for researchers, especially for the video applications which have more difficulties such as the complexity of the neural network which affects the run time. Moreover to use such input like monocular video for depth estimation is considered an attractive idea, particularly for hand-held devices such as mobile phones, nowadays they are very popular for capturing pictures and videos. Here in this work, we focus on enhancing the existing consistent depth estimation for monocular videos approach to be with less usage of memory and with using less number of parameters without having a significant reduction in the quality of the depth estimation.

AB - Depth estimation has made great progress in the last few years due to its applications in robotics science and computer vision. Various methods have been developed and implemented to estimate the depth, without flickers and missing holes. Despite this progress, it is still one of the main challenges for researchers, especially for the video applications which have more difficulties such as the complexity of the neural network which affects the run time. Moreover to use such input like monocular video for depth estimation is considered an attractive idea, particularly for hand-held devices such as mobile phones, nowadays they are very popular for capturing pictures and videos. Here in this work, we focus on enhancing the existing consistent depth estimation for monocular videos approach to be with less usage of memory and with using less number of parameters without having a significant reduction in the quality of the depth estimation.

UR - https://www.mendeley.com/catalogue/c3aaacac-b9b2-3d82-addd-ed0bd5c26a5c/

UR - https://www.mendeley.com/catalogue/c3aaacac-b9b2-3d82-addd-ed0bd5c26a5c/

U2 - 10.5121/csit.2021.110910

DO - 10.5121/csit.2021.110910

M3 - Conference contribution

SP - 110

EP - 115

BT - Computer Science & Information Technology (CS & IT)

ER -

ID: 35287883