From Neurorobotic Localization to Autonomous Vehicles

Yoan Espada, N. Cuperlier, Guillaume Bresson, Olivier Romain
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引用次数: 4

Abstract

The navigation of autonomous vehicles is confronted to the problem of an efficient place recognition system which is able to handle outdoor environments on the long run. The current Simultaneous Localization and Mapping (SLAM) and place recognition solutions have limitations that prevent them from achieving the performances needed for autonomous driving. This paper suggests handling the problem from another perspective by taking inspiration from biological models. We propose a neural architecture for the localization of an autonomous vehicle based on a neurorobotic model of the place cells (PC) found in the hippocampus of mammals. This model is based on an attentional mechanism and only takes into account visual information from a mono-camera and the orientation information to self-localize. It has the advantage to work with low resolution camera without the need of calibration. It also does not need a long learning phase as it uses a one-shot learning system. Such a localization model has already been integrated in a robot control architecture which allows for successful navigation both in indoor and small outdoor environments. The contribution of this paper is to study how it passes the scale change by evaluating the performance of this model over much larger outdoor environments. Eight experiments using real data (image and orientation) grabbed by a moving vehicle are studied (coming from the KITTI odometry datasets and datasets taken with VEDECOM vehicles). Results show the strong adaptability to different kinds of environments of this bio-inspired model primarily developed for indoor navigation.
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从神经机器人定位到自动驾驶汽车
自动驾驶汽车导航面临着一个能够长期处理室外环境的高效位置识别系统的问题。目前的同步定位和地图(SLAM)和位置识别解决方案存在局限性,无法实现自动驾驶所需的性能。本文建议从另一个角度来处理这个问题,从生物学模型中汲取灵感。我们提出了一种基于哺乳动物海马中定位细胞(PC)的神经机器人模型的自动驾驶汽车定位神经结构。该模型基于注意机制,仅考虑单摄像机的视觉信息和方向信息进行自定位。它的优点是可以在低分辨率的相机上工作,而不需要校准。它也不需要很长的学习阶段,因为它使用的是一次性学习系统。这种定位模型已经集成在机器人控制体系结构中,可以在室内和小型室外环境中成功导航。本文的贡献在于通过评估该模型在更大的室外环境中的性能来研究它如何通过尺度变化。研究了8个使用移动车辆捕获的真实数据(图像和方向)的实验(来自KITTI odometry数据集和VEDECOM车辆数据集)。结果表明,该仿生模型对不同环境具有较强的适应性,该模型主要用于室内导航。
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