Filter by

RESET


LICENSE TYPE

PS:License 1.0


Perceiving Systems Autonomous Vision PS:License 1.0 Slow Flow: Exploiting High-Speed Cameras for Accurate and Diverse Optical Flow Reference Data Existing optical flow datasets are limited in size and variability due to the difficulty of capturing dense ground truth. In this paper, we tackle this problem by tracking pixels through densely sampled space-time volumes recorded with a high-speed video camera. Our model exploits the linearity of small motions and reasons about occlusions from multiple frames. Using our technique, we are able to establish accurate reference flow fields outside the laboratory in natural environments. Besides, we show how our predictions can be used to augment the input images with realistic motion blur. We ...
Thumb ticker sm joel slow flow crop
Perceiving Systems Autonomous Vision PS:License 1.0 KITTI 2015: Stereo, Flow, and Scene Flow Benchmark KITTI is one of the most popular datasets for evaluation of vision algorithms, particuarly in the context of street scenes and autonomous driving. The stereo 2015 / flow 2015 / scene flow 2015 benchmark consists of 200 training scenes and 200 test scenes (4 color images per scene, saved in loss less png format). Compared to the stereo 2012 and flow 2012 benchmarks, it comprises dynamic scenes for which the ground truth has been established in a semi-automatic process.
Thumb ticker sm kitti
Perceiving Systems Autonomous Vision PS:License 1.0 The KITTI Dataset The KITTI dataset is the de-facto standard for developing and testing computer vision algorithms for real-world autonomous driving scenarios and more.
Thumb ticker sm kittiorig
Autonomous Vision OctNet: Learning Deep 3D Representations at High Resolutions We present OctNet, a representation for deep learning with sparse 3D data. In contrast to existing models, our representation enables 3D convolutional networks which are both deep and high resolution. Towards this goal, we exploit the sparsity in the input data to hierarchically partition the space using a set of unbalanced octrees where each leaf node stores a pooled feature representation. This allows to focus memory allocation and computation to the relevant dense regions and enables deeper networks without compromising resolution. We demonstrate the utility of our OctNet representation ...