Gaze Selection for Enhanced Visual Odometry During Navigation

Travis Manderson, Andrew Holliday, G. Dudek
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引用次数: 3

Abstract

We present an approach to enhancing visual odometry and Simultaneous Localization and Mapping (SLAM) in the context of robot navigation by actively modulating the gaze direction to enhance the quality of the odometric estimates that are returned. We focus on two quality factors: i) stability of the visual features, and ii) consistency of the visual features with respect to robot motion and the associated correspondence between frames. We assume that local texture measures are associated with underlying scene content and thus with the quality of the visual features for the associated region of the scene. Based on this assumption, we train a machine-learning system to score different regions of an image based on their texture and then guide the robot's gaze toward high scoring image regions. Our work is targeted towards motion estimation and SLAM for small, lightweight, and autonomous air vehicles where computational resources are constrained in weight, size, and power. However, we believe that our work is also applicable to other types of robotic systems. Our experimental validation consists of simulations, constrained tests, and outdoor flight experiments on an unmanned aerial vehicle. We find that modulating gaze direction can improve localization accuracy by up to 62 percent.
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导航过程中增强视觉里程计的凝视选择
我们提出了一种在机器人导航环境下通过主动调节凝视方向来增强视觉里程计和同步定位和映射(SLAM)的方法,以提高返回的里程估计的质量。我们关注两个质量因素:i)视觉特征的稳定性,以及ii)视觉特征与机器人运动和帧之间相关对应的一致性。我们假设局部纹理度量与底层场景内容相关,因此与场景相关区域的视觉特征质量相关。基于这一假设,我们训练了一个机器学习系统,根据图像的纹理对图像的不同区域进行评分,然后引导机器人的视线转向得分较高的图像区域。我们的工作是针对小型、轻量级和自主飞行器的运动估计和SLAM,这些飞行器的计算资源受到重量、尺寸和功率的限制。然而,我们相信我们的工作也适用于其他类型的机器人系统。我们的实验验证包括模拟、约束测试和无人机户外飞行实验。我们发现,调节凝视方向可以提高定位精度高达62%。
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