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Dense Disparity Estimation in Ego-motion Reduced Search Space

机译:自我运动缩减搜索空间中的密集视差估计

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摘要

Depth estimation from stereo images remains a challenge even though studied for decades. The KITTI benchmark shows that the state-of-the-art solutions offer accurate depth estimation, but are still computationally complex and often require a GPU or FPGA implementation. In this paper we aim at increasing the accuracy of depth map estimation and reducing the computational complexity by using information from previous frames. We propose to transform the disparity map of the previous frame into the current frame, relying on the estimated ego-motion, and use this map as the prediction for the Kalman filter in the disparity space. Then, we update the predicted disparity map using the newly matched one. This way we reduce disparity search space and flickering between consecutive frames, thus increasing the computational efficiency of the algorithm. In the end, we validate the proposed approach on real-world data from the KITTI benchmark suite and show that the proposed algorithm yields more accurate results, while at the same time reducing the disparity search space.
机译:尽管研究了数十年,但立体图像的深度估计仍然是一个挑战。 KITTI基准测试表明,最先进的解决方案可提供准确的深度估计,但计算复杂,通常需要GPU或FPGA实现。在本文中,我们旨在通过使用先前帧中的信息来提高深度图估计的准确性并降低计算复杂性。我们建议依靠估计的自我运动将前一帧的视差图转换为当前帧,并将该图用作视差空间中卡尔曼滤波器的预测。然后,我们使用新匹配的地图更新预测的视差图。这样,我们减少了视差搜索空间和连续帧之间的闪烁,从而提高了算法的计算效率。最后,我们对KITTI基准套件中的真实数据验证了所提出的方法,并表明所提出的算法产生了更准确的结果,同时减少了视差搜索空间。

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