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Feature Space Optimization for Semantic Video Segmentation

机译:语义视频分段特征空间优化

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We present an approach to long-range spatio-temporal regularization in semantic video segmentation. Temporal regularization in video is challenging because both the camera and the scene may be in motion. Thus Euclidean distance in the space-time volume is not a good proxy for correspondence. We optimize the mapping of pixels to a Euclidean feature space so as to minimize distances between corresponding points. Structured prediction is performed by a dense CRF that operates on the optimized features. Experimental results demonstrate that the presented approach increases the accuracy and temporal consistency of semantic video segmentation.
机译:我们在语义视频分段中提出了一种在远程时空正规化的方法。视频中的时间正则化是具有挑战性的,因为相机和场景都可以运动。因此,时空体积中的欧几里德距离不是对应的良好代理。我们优化对欧几里德特征空间的像素的映射,以便最小化对应点之间的距离。结构化预测由在优化特征上操作的密集CRF进行。实验结果表明,提出的方法增加了语义视频分割的准确性和时间一致性。

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