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Real-time stereo matching failure prediction and resolution using orthogonal stereo setups

机译:使用正交立体声设置进行实时立体声匹配故障预测和解决

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Estimating the depth from two images with a baseline has a well-known regular problem: When a line is parallel to the epipolar geometry it is not possible to estimate the depth from pixels on this line. Moreover, the classic measure for the certainty of the depth estimate fails as well: The matching score between the template and any pixel on the epipolar line is perfect. This results for common scenes in incorrect matches with very high confidence, some even resistant to left-right image checks. It is straightforward to try to address this by adding a second stereo head in a perpendicular direction. However, it is nontrivial to identify the failure and fuse the two depth maps in a real-time system. A simple weighted average will alleviate the problem but still result in a very large error in the depth map. Our contributions are: 1) We derive a model to predict the failure of stereo by leveraging the matching scores and 2) we propose a combined cost function to fuse two depth maps from orthogonal stereo heads using the failure prediction, matching score and consistency. We show the resulting system in real-time operation on a low-latency system in indoor, urban and natural environments.
机译:用基线估计两幅图像的深度存在一个众所周知的常规问题:当一条线与对极几何平行时,无法从该线上的像素估计深度。此外,用于确定深度估计值的经典度量也失败了:模板与对极线上的任何像素之间的匹配分数都是完美的。这导致常见场景中的不正确匹配具有很高的置信度,有些甚至可以抵抗左右图像检查。尝试通过在垂直方向上添加第二个立体声头来解决这个问题很简单。但是,识别故障并在实时系统中融合两个深度图并非易事。简单的加权平均值可以缓解该问题,但仍会导致深度图中的很大误差。我们的贡献是:1)我们推导了一个通过利用匹配得分来预测立体声失败的模型; 2)我们提出了一种组合成本函数,使用失效预测,匹配得分和一致性来融合来自正交立体声头的两个深度图。我们将在室内,城市和自然环境中的低延迟系统上实时运行后,显示最终的系统。

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