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The Selection of the Optimal Baseline in the Front-view Monocular Vision System

机译:前视单目视觉系统中最佳基线的选择

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In the front-view monocular vision system, the accuracy of solving the depth field is related to the length of the inter-frame baseline and the accuracy of image matching result. In general, a longer length of the baseline can lead to a higher precision of solving the depth field. However, at the same time,the difference between the inter-frame images increases, which increases the difficulty in image matching and the decreases matching accuracy and at last may leads to the failure of solving the depth field. One of the usual practices is to use the tracking and matching method to improve the matching accuracy between images, but this algorithm is easy to cause matching drift between images with large interval, resulting in cumulative error in image matching, and finally the accuracy of solving the depth field is still very low. In this paper, we propose a depth field fusion algorithm based on the optimal length of the baseline.Firstly,we analyze the quantitative relationship between the accuracy of the depth field calculation and the length of the baseline between frames, and find the optimal length of the baseline by doing lots of experiments; secondly, we introduce the inverse depth filtering technique for sparse SLAM, and solve the depth field under the constraint of the optimal length of the baseline.By doing a large number of experiments, the results show that our algorithm can effectively eliminate the mismatch caused by image changes, and can still solve the depth field correctly in the large baseline scene.Our algorithm is superior to the traditional SFM algorithm in time and space complexity. The optimal baseline obtained by a large number of experiments plays a guiding role in the calculation of the depth field in front-view monocular.
机译:在前视单眼视觉系统中,深度场的求解精度与帧间基线的长度和图像匹配结果的精度有关。通常,较长的基线长度可以导致求解深度场的精度更高。然而,同时,帧间图像之间的差异增大,这增加了图像匹配的难度,并且降低了匹配精度,最终可能导致无法解决深度场。一种常用的方法是使用跟踪和匹配方法来提高图像之间的匹配精度,但是该算法很容易造成间隔较大的图像之间的匹配漂移,从而导致图像匹配中出现累积误差,最终导致求解精度下降。深度场仍然很低。本文提出了一种基于最优基线长度的深度场融合算法。首先,分析了深度场计算精度与帧间基线长度之间的定量关系,并找到了最优长度。通过大量实验确定基线;其次,介绍了稀疏SLAM的逆深度滤波技术,并在基线的最佳长度约束下解决了深度场问题。通过大量的实验,结果表明我们的算法可以有效地消除由SLAM引起的失配。图像变化,并且仍然可以正确地解决大基线场景中的深度场。我们的算法在时间和空间复杂度方面优于传统的SFM算法。通过大量实验获得的最佳基线在前视单眼深度场的计算中起着指导作用。

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