An Enhancement for the Consistent Depth Estimation of Monocular Videos using Lightweight Network

Mohamed N. Sweilam, N. Tolstokulakov
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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 implemented and enhanced 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 complexity of the neural network which af ects 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, they are very popular for capturing pictures and videos, in addition to having a limited amount of RAM. Here in this work, we focus on enhancing the existing consistent depth estimation for monocular videos approach to be with less usage of RAM and with using less number of parameters without having a significant reduction in the quality of the depth estimation.
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基于轻量级网络的单目视频一致深度估计增强
深度估计由于其在机器人科学和计算机视觉中的应用,在过去的几年里取得了很大的进展。已经实现和改进了各种方法来估计无闪烁和漏孔的深度。尽管取得了这些进展,但它仍然是研究人员面临的主要挑战之一,特别是在视频应用中,神经网络的复杂性较大,影响了运行时间。此外,使用像单目视频这样的输入来进行深度估计被认为是一个有吸引力的想法,特别是对于像手机这样的手持设备,它们非常受欢迎,用于捕捉图片和视频,此外还有有限的RAM。在这项工作中,我们专注于增强现有的单目视频一致深度估计方法,以减少RAM的使用和使用更少的参数,而不会显著降低深度估计的质量。
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