We present a novel camera path optimization framework for the task of online video stabilization. Typically, a stabilization pipeline consists of three steps: motion estimating, path smoothing, and novel view rendering. Most previous methods concentrate on motion estimation, proposing various global or local motion models. In contrast, path optimization receives relatively less attention, especially in the important online setting, where no future frames are available. In this work, we adopt recent off-the-shelf high-quality deep motion models for motion estimation to recover the camera trajectory and focus on the latter two steps. Our network takes a short 2D camera path in a sliding window as input and outputs the stabilizing warp field o...
We present a robust and efficient approach to video stabilization that achieves high-quality camera ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...
We present a novel camera path optimization framework for the task of online video stabilization. Ty...
Previous deep learning-based video stabilizers require a large scale of paired unstable and stable v...
Video stabilization is one of the most widely sought features in video processing. The problem of vi...
Video stabilization refers to the problem of transforming a shaky video into a visually pleasing one...
Video stabilization refers to the problem of transforming a shaky video into a visually pleasing one...
Videos shot by laymen using hand-held cameras contain undesirable shaky motion. Estimating the globa...
Abstract Video stabilization smooths camera motion estimates in a way that should adapt to different...
User-Generated Content is normally recorded with mobile phones by non-professionals, which leads to ...
(a) a single global path (b) our bundled paths Figure 1: Comparison between traditional 2D stabiliza...
In this paper, we propose a video stabilization method that takes advantages of both online and offl...
[[abstract]]The acquisition of digital video usually suffers from undesirable camera jitters due to ...
In this paper, we propose a video stabilization method that takes advantages of both online and offl...
We present a robust and efficient approach to video stabilization that achieves high-quality camera ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...
We present a novel camera path optimization framework for the task of online video stabilization. Ty...
Previous deep learning-based video stabilizers require a large scale of paired unstable and stable v...
Video stabilization is one of the most widely sought features in video processing. The problem of vi...
Video stabilization refers to the problem of transforming a shaky video into a visually pleasing one...
Video stabilization refers to the problem of transforming a shaky video into a visually pleasing one...
Videos shot by laymen using hand-held cameras contain undesirable shaky motion. Estimating the globa...
Abstract Video stabilization smooths camera motion estimates in a way that should adapt to different...
User-Generated Content is normally recorded with mobile phones by non-professionals, which leads to ...
(a) a single global path (b) our bundled paths Figure 1: Comparison between traditional 2D stabiliza...
In this paper, we propose a video stabilization method that takes advantages of both online and offl...
[[abstract]]The acquisition of digital video usually suffers from undesirable camera jitters due to ...
In this paper, we propose a video stabilization method that takes advantages of both online and offl...
We present a robust and efficient approach to video stabilization that achieves high-quality camera ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...
A major difference between amateur and professional video lies in the quality of camera paths. Previ...