Lines are interesting geometrical features commonly seen in indoor and urban environments. There is missing a complete benchmark where one can evaluate lines from a sequential stream of images in all its stages: Line detection, Line Association and Pose error. To do so, we present a complete and exhaustive benchmark for visual lines in a SLAM front-end, both for RGB and RGBD, by providing a plethora of complementary metrics. We have also labelled data from well-known SLAM datasets in order to have all in one poses and accurately annotated lines. In particular, we have evaluated 17 line detection algorithms, 5 line associations methods and the resultant pose error for aligning a pair of frames with several combinations of detector-association. We have packaged all methods and evaluations metrics and made them publicly available on web-page https://prime-slam.github.io/evolin/.
翻译:线条是室内和城市环境中常见的有趣的几何特征。缺少一个完整的基准,可以用来评估各个阶段相继图像流的线条:线探测、线联系和波斯误差。为此,我们通过提供大量补充性指标,为RGB和RGBD的SLM前端提供了完整和详尽的线条基准。我们还将众所周知的SLM数据集中的数据贴上标签,以便将所有数据都放在一起并准确贴上附加注释的线条。特别是,我们评估了17条线探测算法、5条线联系方法和由此产生的差错,以便将一对框架与几组探测器-协会组合相匹配。我们已经将所有方法和评价指标包在一起,并在网页https://prime-slam.github.io/evolin/上公布。</s>