同时多视点视频分割

Abdelaziz Djelouah, Jean-Sébastien Franco, Edmond Boyer, P. Pérez, G. Drettakis
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引用次数: 7

摘要

我们解决了一般动态场景和可能有移动摄像机的室外环境中的多视图视频分割问题。动态场景的多视图方法通常依赖于几何校准来施加视点之间的空间形状约束。在本文中,我们证明了可以放松校准约束,同时仍然可以使用多视图约束获得有竞争力的分割结果。我们通过运动相关线索引入了新的多视图共时性约束,以及共同分割方法使用的常见外观特征来识别对象的共实例。我们还利用基于学习的分割策略,将问题转换为满足多视图约束的单目提案的选择。这产生了一种完全自动化的方法,可以在没有任何特定预处理阶段的情况下分割感兴趣的主题。在几个具有挑战性的室外数据集上的结果证明了我们方法的可行性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cotemporal Multi-View Video Segmentation
We address the problem of multi-view video segmentation of dynamic scenes in general and outdoor environments with possibly moving cameras. Multi-view methods for dynamic scenes usually rely on geometric calibration to impose spatial shape constraints between viewpoints. In this paper, we show that the calibration constraint can be relaxed while still getting competitive segmentation results using multi-view constraints. We introduce new multi-view cotemporality constraints through motion correlation cues, in addition to common appearance features used by co-segmentation methods to identify co-instances of objects. We also take advantage of learning based segmentation strategies by casting the problem as the selection of monocular proposals that satisfy multi-view constraints. This yields a fully automated method that can segment subjects of interest without any particular pre-processing stage. Results on several challenging outdoor datasets demonstrate the feasibility and robustness of our approach.
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