5,433 research outputs found

    Learning to Look Around: Intelligently Exploring Unseen Environments for Unknown Tasks

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    It is common to implicitly assume access to intelligently captured inputs (e.g., photos from a human photographer), yet autonomously capturing good observations is itself a major challenge. We address the problem of learning to look around: if a visual agent has the ability to voluntarily acquire new views to observe its environment, how can it learn efficient exploratory behaviors to acquire informative observations? We propose a reinforcement learning solution, where the agent is rewarded for actions that reduce its uncertainty about the unobserved portions of its environment. Based on this principle, we develop a recurrent neural network-based approach to perform active completion of panoramic natural scenes and 3D object shapes. Crucially, the learned policies are not tied to any recognition task nor to the particular semantic content seen during training. As a result, 1) the learned "look around" behavior is relevant even for new tasks in unseen environments, and 2) training data acquisition involves no manual labeling. Through tests in diverse settings, we demonstrate that our approach learns useful generic policies that transfer to new unseen tasks and environments. Completion episodes are shown at https://goo.gl/BgWX3W

    MatryODShka: Real-time 6DoF Video View Synthesis using Multi-Sphere Images

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    We introduce a method to convert stereo 360{\deg} (omnidirectional stereo) imagery into a layered, multi-sphere image representation for six degree-of-freedom (6DoF) rendering. Stereo 360{\deg} imagery can be captured from multi-camera systems for virtual reality (VR), but lacks motion parallax and correct-in-all-directions disparity cues. Together, these can quickly lead to VR sickness when viewing content. One solution is to try and generate a format suitable for 6DoF rendering, such as by estimating depth. However, this raises questions as to how to handle disoccluded regions in dynamic scenes. Our approach is to simultaneously learn depth and disocclusions via a multi-sphere image representation, which can be rendered with correct 6DoF disparity and motion parallax in VR. This significantly improves comfort for the viewer, and can be inferred and rendered in real time on modern GPU hardware. Together, these move towards making VR video a more comfortable immersive medium.Comment: 25 pages, 13 figures, Published at European Conference on Computer Vision (ECCV 2020), Project Page: http://visual.cs.brown.edu/matryodshk

    Free Viewpoint Video Based on Stitching Technique

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    Image stitching is a technique used for creating one panoramic scene from multiple images. It is used in panoramic photography and video where the viewer can only scroll horizontally and vertically across the scene. However, stitching has not been used for creating free-viewpoint videos (FVV) where viewers can change their viewing points freely and smoothly while playing the video. current research, implemented FVV playing system using image stitching, this system allows users to enjoy the capability of moving their viewpoint freely and smoothly. To develop this system, user should capture MVV from different viewpoints and with appropriate region area for each pair of cameras then the system stitch the overlapped video to create stitched video/videos to display it in FVV playing system with applying freely and smoothly switching and interpolation of viewpoints over video playback. Current research evaluated the performance of video playing system based on system idea, system accuracy, smoothness, and user satisfaction. The results of evaluation have been very positive in most aspects
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