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Sub-pixel matching method for low-resolution thermal stereo images

机译:低分辨率热立体图像子像素匹配方法

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摘要

In the context of a localization and tracking application, we developed a stereo vision system based on cheap low-resolution 80 x 60 pixels thermal cameras. We proposed a threefold sub-pixel stereo matching framework (called ST for Subpixel Thermal): (1) robust features extraction method based on phase congruency, (2) rough matching of these features in pixel precision, and (3) refined matching in sub-pixel accuracy based on local phase coherence. We performed experiments on our very low-resolution thermal images (acquired using a stereo system we manufactured) as for high-resolution images from a benchmark dataset. Even if phase congruency computation time is high, it was able to extract two times more features than state-of-the-art methods such as ORB or SURF. We proposed a modified version of the phase correlation applied in the phase congruency feature space for sub-pixel matching. Using simulated stereo, we investigated how the phase congruency threshold and the sub-image size of sub-pixel matching can influence the accuracy. We then proved that given our stereo setup and the resolution of our images, being wrong of 1 pixel leads to a +/- 500 mm error in the Z position of the point. Finally, we showed that our method could extract four times more matches than a baseline method ORB + OpenCV KNN matching on low-resolution images. Moreover, our matches were more robust. More precisely, when projecting points of a standing person, ST got a standard deviation of approximate to 300 mm when ORB + OpenCV KNN gave more than 1000 mm.
机译:在本地化和跟踪应用程序的上下文中,我们开发了一种基于便宜的低分辨率80 x 60像素热摄像机的立体视觉系统。我们提出了一个三倍子像素立体声匹配框架(称为子像素热量的ST):(1)基于相同等的鲁棒特征提取方法,(2)这些特征在像素精度中的粗糙匹配,以及(3)在子子里精制匹配-Pixel基于局部相干性的精度。我们对我们非常低分辨率的热图像(使用我们制造的立体声系统获取)进行了实验,从基准数据集中获得高分辨率图像。即使相中计算时间很高,它也能够提取比诸如ORB或冲浪的最先进的方法更多的特征。我们提出了应用于子像素匹配的相一致性特征空间中应用的相位相关的修改版本。使用模拟立体声,我们研究了子像素匹配的相变阈值和子图像大小如何影响精度。然后,我们证明,鉴于我们的立体声设置和我们的图像的分辨率,1像素的错误导致z位置的+/- 500 mm错误。最后,我们展示我们的方法可以提取比在低分辨率图像上的基线方法ORB + OpenCV Knn匹配的比赛中的四倍。此外,我们的比赛更加强大。更确切地说,当站立的人的投射点时,当ORB + OpenCV KNN产生超过1000mm时,ST在300 mm的标准偏差。

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