scholarly journals Occlusion aware unsupervised learning of optical flow from video

Author(s):  
Jianfeng Li ◽  
Junqiao Zhao ◽  
Shuangfu Song ◽  
Tiantian Feng
Author(s):  
Shuaicheng Liu ◽  
Kunming Luo ◽  
Nianjin Ye ◽  
Chuan Wang ◽  
Jue Wanga ◽  
...  

2020 ◽  
Vol 103 ◽  
pp. 107191 ◽  
Author(s):  
Zhe Ren ◽  
Junchi Yan ◽  
Xiaokang Yang ◽  
Alan Yuille ◽  
Hongyuan Zha

Author(s):  
Guangming Wang ◽  
Chi Zhang ◽  
Hesheng Wang ◽  
Jingchuan Wang ◽  
Yong Wang ◽  
...  

Sensors ◽  
2019 ◽  
Vol 19 (11) ◽  
pp. 2459 ◽  
Author(s):  
Ji-Hun Mun ◽  
Moongu Jeon ◽  
Byung-Geun Lee

Herein, we propose an unsupervised learning architecture under coupled consistency conditions to estimate the depth, ego-motion, and optical flow. Previously invented learning techniques in computer vision adopted a large amount of the ground truth dataset for network training. A ground truth dataset, including depth and optical flow collected from the real world, requires tremendous effort in pre-processing due to the exposure to noise artifacts. In this paper, we propose a framework that trains networks while using a different type of data with combined losses that are derived from a coupled consistency structure. The core concept is composed of two parts. First, we compare the optical flows, which are estimated from both the depth plus ego-motion and flow estimation network. Subsequently, to prevent the effects of the artifacts of the occluded regions in the estimated optical flow, we compute flow local consistency along the forward–backward directions. Second, synthesis consistency enables the exploration of the geometric correlation between the spatial and temporal domains in a stereo video. We perform extensive experiments on the depth, ego-motion, and optical flow estimation on the Karlsruhe Institute of Technology and Toyota Technological Institute (KITTI) dataset. We verify that the flow local consistency loss improves the optical flow accuracy in terms of the occluded regions. Furthermore, we also show that the view-synthesis-based photometric loss enhances the depth and ego-motion accuracy via scene projection. The experimental results exhibit the competitive performance of the estimated depth and the optical flow; moreover, the induced ego-motion is comparable to that obtained from other unsupervised methods.


Author(s):  
Pengpeng Liu ◽  
Irwin King ◽  
Michael R. Lyu ◽  
Jia Xu

We present DDFlow, a data distillation approach to learning optical flow estimation from unlabeled data. The approach distills reliable predictions from a teacher network, and uses these predictions as annotations to guide a student network to learn optical flow. Unlike existing work relying on handcrafted energy terms to handle occlusion, our approach is data-driven, and learns optical flow for occluded pixels. This enables us to train our model with a much simpler loss function, and achieve a much higher accuracy. We conduct a rigorous evaluation on the challenging Flying Chairs, MPI Sintel, KITTI 2012 and 2015 benchmarks, and show that our approach significantly outperforms all existing unsupervised learning methods, while running at real time.


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