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Monocular Vision-Based Vehicular Speed Estimation from Compressed Video Streams

机译:压缩视频流的单眼视觉车速估计

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This paper introduces a monocular vision-based vehicular speed estimation algorithm that operates in the compressed domain. The algorithm relies on the use of motion vectors associated with video compression to achieve computationally efficient and accurate speed estimation. Building the speed estimation directly into the compression step adds only a small amount of computation which is conducive to real-time performance. We demonstrate the effectiveness of the algorithm on 30 fps video of one hundred and forty vehicles travelling at speeds ranging from 30 to 60 mph. The average speed estimation accuracy of our algorithm across the test set was better than 2.50% at a yield of 100%, with the accuracy increasing as the yield decreases and as the frame rate increases.
机译:本文介绍了一种在压缩域中运行的单眼视觉的车速估计算法。该算法依赖于使用与视频压缩相关联的运动矢量来实现计算有效和准确的速度估计。将速度估计直接建立在压缩步骤中仅增加了少量计算,这有利于实时性能。我们展示了算法在30至60英里/小时的速度下行进的30个FPS视频的算法。在测试集中的算法的平均速度估计准确度优于2.50%,产率为100%,随着收益率降低,随着帧速率的增加,精度增加。

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