Simultaneous Localization and Mapping (SLAM) techniques play a key role towards long-term autonomy of mobile robots due to the ability to correct localization errors and produce consistent maps of an environment over time. Contrarily to urban or man-made environments, where the presence of unique objects and structures offer unique cues for localization, the appearance of unstructured natural environments is often ambiguous and self-similar, hindering the performances of loop closure detection. In this paper, we present an approach to improve the robustness of place recognition in the context of a submap-based stereo SLAM based on Gaussian Process Gradient Maps (GPGMaps). GPGMaps embed a continuous representation of the gradients of the local terrain elevation by means of Gaussian Process regression and Structured Kernel Interpolation, given solely noisy elevation measurements. We leverage the image-like structure of GPGMaps to detect loop closures using traditional visual features and Bag of Words. GPGMap matching is performed as an SE(2) alignment to establish loop closure constraints within a pose graph. We evaluate the proposed pipeline on a variety of datasets recorded on Mt. Etna, Sicily and in the Morocco desert, respectively Moon- and Mars-like environments, and we compare the localization performances with state-of-the-art approaches for visual SLAM and visual loop closure detection.
翻译:与城市或人为环境相对,在城市或人为环境中,独特的天体和结构的存在为本地化提供了独特的提示,无结构的自然环境的外观往往模糊不清,自相矛盾,妨碍了环状闭合探测的性能。在本文件中,我们介绍了一种方法,在基于高山进程梯度地图(GGPGMaps)的亚马普立体立体立体软体SLAM中提高定位的稳健性能,与城市或人为环境相对应,在城市或人为环境中,独特的天体和结构化物体的存在为本地地貌梯度提供了独特的提示,而仅仅由于测高度测量,无结构的自然环境的外观外观和自相相似,妨碍了环状闭闭探测的性能。GPGMPM匹配是S(2)级立体立体立体立体,以图为基础,建立双向闭合体限制。我们评估了在高视距轨道上的本地地形梯度梯度梯度梯度梯度,并分别记录了摩洛哥的轨道和火星探测状态。