论文标题
视觉大满贯的双向循环闭合
Bi-directional Loop Closure for Visual SLAM
论文作者
论文摘要
用于智能自动驾驶汽车的视觉导航系统的关键功能块是循环闭合检测和随后的重新定位。最新的方法仍然将问题视为沿先前运动方向的单向方向。结果,在没有明显相似的观点重叠的情况下,大多数方法都失败了。在这项研究中,我们提出了一种双向循环封闭的方法。这将首次为我们提供即使在相反方向行驶的位置的能力,因此在没有直接环的情况下会大大降低长期的探测器漂移。我们提出了一种从大型数据集中选择培训数据的技术,以使其可用于双向问题。该数据用于训练和验证两种不同的CNN架构,以以端到端的方式在视图之间进行回路闭合检测和随后的6-DOF相机姿势的回归。结果带来了相当大的影响,并极大地帮助了不提供直接循环封闭机会的现实情况。我们与其他已建立的方法进行了严格的经验比较,并评估了Finnforest数据集和Penncosyvio数据集的室外和室内数据的方法。
A key functional block of visual navigation system for intelligent autonomous vehicles is Loop Closure detection and subsequent relocalisation. State-of-the-Art methods still approach the problem as uni-directional along the direction of the previous motion. As a result, most of the methods fail in the absence of a significantly similar overlap of perspectives. In this study, we propose an approach for bi-directional loop closure. This will, for the first time, provide us with the capability to relocalize to a location even when traveling in the opposite direction, thus significantly reducing long-term odometry drift in the absence of a direct loop. We present a technique to select training data from large datasets in order to make them usable for the bi-directional problem. The data is used to train and validate two different CNN architectures for loop closure detection and subsequent regression of 6-DOF camera pose between the views in an end-to-end manner. The outcome packs a considerable impact and aids significantly to real-world scenarios that do not offer direct loop closure opportunities. We provide a rigorous empirical comparison against other established approaches and evaluate our method on both outdoor and indoor data from the FinnForest dataset and PennCOSYVIO dataset.